| Type: | Package |
| Title: | Design and Analysis of Experiments with R |
| Version: | 1.2-11 |
| Date: | 2023-09-04 |
| Maintainer: | John Lawson <lawsonjsl7net@gmail.com> |
| Description: | Contains Data frames and functions used in the book "Design and Analysis of Experiments with R", Lawson(2015) ISBN-13:978-1-4398-6813-3. |
| License: | GPL-2 |
| Depends: | R (≥ 3.5.0) |
| Encoding: | UTF-8 |
| LazyLoad: | true |
| LazyData: | true |
| Imports: | stringi,stats,graphics,grDevices,lattice |
| RoxygenNote: | 7.2.3 |
| NeedsCompilation: | no |
| Author: | John Lawson [aut, cre], Gerhard Krennrich [aut], Ruben Amoros [ctr] |
| Packaged: | 2023-09-08 20:04:31 UTC; John |
| Repository: | CRAN |
| Date/Publication: | 2023-09-09 08:20:07 UTC |
Data frames and functions for Design and Analysis of Experiments with R
Description
This package contains the data sets and functions from the book Design and Analysis of Experiments with R published by CRC in 2013.
Author(s)
John Lawson
Maintainer: John Lawson <lawsonjsl7net@gmail.com>
References
J. Lawson, Design and Analysis of Experiments with R, CRC 2013.
Alternate 16 run screening designs
Description
Recalls Jones and Montgomery's 16 run screening designs from data frames
Usage
Altscreen(nfac, randomize=FALSE)
Arguments
nfac |
input- an integer |
randomize |
input - logical |
Value
a data frame containing the alternate screening design
Author(s)
John Lawson
References
Jones, B. and Montgomery, D. C. (2010) "Alternatives to resolution IV screening designs in 16 runs", Int. J. Experimental Design and Process Optimization, Vol 1, No. 4, 2010.
apolipoprotein survey varaince component study
Description
Data from the apolipoprotein survey variance component study of Chapter 5 in Design and Analysis of Experiments with R
Usage
data(Apo)
Format
A data frame with 30 observations on the following 2 variables.
laba factor with levels
ABCDconca numeric vector
Source
Design and Analysis of Experiments with R, by John Lawson, CRC/Chapman Hall
Examples
data(Apo)
Balanced incomplete blocksize
Description
This function computes the number of blocks, treatment frequency and lambda for a potential BIB design
Usage
BIBsize(t,k)
Arguments
t |
input - number of levels of the treatment factor |
k |
input - blocksize or number of experimental units per block |
Value
a list containing the b=number of blocks, r=number of treatment replicates and lambda for a potential BIB design with t levels of treatment factor and blocksize k.
Author(s)
John Lawson
blood pressure monitor experiment
Description
Data from the blood pressure monitor experiment experiment in Chapter 7 of Design and Analysis of Experiments with R
Usage
data(BPmonitor)
Format
A data frame with 12 observations on the following 3 variables.
Blocka factor with levels
123456Treatmenta factor with levels
"P""A""B""C"pressurea numeric vector
Source
Design and Analysis of Experiments with R, by John Lawson, CRC/Chapman Hall
Examples
data(BPmonitor)
Confounded Block Dishwashing Experiment
Description
Data from the Confounded Block Dishwashing Experiment in chapter 7 of Design and Analysis of Experiments with R
Usage
data(Bdish)
Format
A data frame with 16 observations on the following 5 variables.
Blocksa factor with levels
1234Aa factor with levels
-11Ba factor with levels
-11Ca factor with levels
-11Da factor with levels
-11ya numeric vector containing the response
Source
Design and Analysis of Experiments with R, by John Lawson, CRC/Chapman Hall
Examples
data(Bdish)
Confounded block fractional mouse growth experiment
Description
Data from the Confounded block fractional factorial mouse growth experiment in chapter 7 of Design and Analysis of Experiments with R
Usage
data(Bff)
Format
A data frame with 16 observations on the following 5 variables.
Blocksa factor with levels
12345678Aa factor with levels
-11Ba factor with levels
-11Ca factor with levels
-11Da factor with levels
-11Ea factor with levels
-11Fa factor with levels
-11Ga factor with levels
-11Ha factor with levels
-11weighta numeric vector containing the response
Source
Design and Analysis of Experiments with R, by John Lawson, CRC/Chapman Hall
Examples
data(Bff)
Box and Meyer's unreplicated 2^4 from Chapter 3
Description
Data from Box and Meyer's unreplicated 2^4 in chapter 3 of Design and Analysis
of Experiments with R
Usage
data(BoxM)
Format
A data frame with 16 observations on the following 4 variables.
Aa numeric vector containing the coded (-1,1) levels of factor A
Ba numeric vector containing the coded (-1,1) levels of factor B
Ca numeric vector containing the coded (-1,1) levels of factor C
Da numeric vector containing the coded (-1,1) levels of factor D
ya numeric vector containing the response
Source
Design and Analysis of Experiments with R, by John Lawson, CRC/Chapman Hall
References
Box, G. E. P. "George's Column", Quality Engineering, Vol. 3, pp. 405-410.
Examples
data(BoxM)
CO emmisions experiment data from Chapter 3
Description
Data from the CO emissions experiment in chapter 3 of Design and Analysis of Experiments with R
Usage
data(COdata)
Format
A data frame with 18 observations on the following 3 variables.
Etha factor with levels
0.10.20.3Ratioa factor with levels
141516COa numeric vector
Source
Design and Analysis of Experiments with R, by John Lawson, CRC/Chapman Hall
Examples
data(COdata)
Definitive Screening Designs
Description
Recalls Jones and Nachtsheim's Definitive screening designs for 3-level factors and 3-level factors with added 2-level categorical factors.
Usage
DefScreen(m, c=0, center=0, randomize=FALSE)
Arguments
m |
input- an integer, the m=number of 3-level factors |
c |
input- an integer, the m=number of 2-level categorical factors, default is zero if not supplied |
center |
input- an integer, the number of extra center points. This must be zero when c>0 |
randomize |
input - logical |
Value
a data frame containing the definitive screening design with 3-level factors first followed by 2-level factors.
Author(s)
John Lawson
References
Jones, B. and Nachtsheim, C. J. (2011) "A Class of Three Level Designs for Definitive Screening in the Presence of Second-Order Effects", Journal of Quality Technology, Vol 43, No. 1, 2011, pp 1-15. Jones, B. and Nachtsheim, C. J. (2013) "Definitive Screening Designs with Added Two-Level Categorical Factors", Journal of Quality Technology, Vol 44, No. 2, 2013, pp. 121-129.
D-efficient Estimation Equivalent Response Surface Designs
Description
Recalls Jones and Goos JQT Estimation Equivalent Response Surface Designs for 1 whole plot factor and 1 sub-plot factor from a catalog
Usage
EEw1s1(des, randomize=FALSE)
Arguments
des |
input- a character variable containing the name of a design in the catalog. If left blank, the function prints a table showing all the design names in the catalog |
randomize |
input- a logical |
Value
design
Author(s)
John Lawson
References
Jones, B. and Goos, P.(2012) "An Algorithm for Finding D-Efficient Equivalent-Estimation Second-Order Split Plot Designs", Journal of Quality Technology, Vol 44, No. 4, pp281-303, 2012.
D-efficient Estimation Equivalent Response Surface Designs
Description
Recalls Jones and Goos JQT Estimation Equivalent Response Surface Designs for 1 whole plot factor and 2 sub-plot factors from a catalog
Usage
EEw1s2(des, randomize=FALSE)
Arguments
des |
input- a character variable containing the name of a design in the catalog. If left blank, the function prints a table showing all the design names in the catalog |
randomize |
input- a logical |
Value
design
Author(s)
John Lawson
References
Jones, B. and Goos, P.(2012) "An Algorithm for Finding D-Efficient Equivalent-Estimation Second-Order Split Plot Designs", Journal of Quality Technology, Vol 44, No. 4, pp281-303, 2012.
D-efficient Estimation Equivalent Response Surface Designs
Description
Recalls Jones and Goos JQT Estimation Equivalent Response Surface Designs for 1 whole plot factor and 3 sub-plot factors from a catalog
Usage
EEw1s3(des, randomize=FALSE)
Arguments
des |
input- a character variable containing the name of a design in the catalog. If left blank, the function prints a table showing all the design names in the catalog |
randomize |
input- a logical |
Value
design
Author(s)
John Lawson
References
Jones, B. and Goos, P.(2012) "An Algorithm for Finding D-Efficient Equivalent-Estimation Second-Order Split Plot Designs", Journal of Quality Technology, Vol 44, No. 4, pp281-303, 2012.
D-efficient Estimation Equivalent Response Surface Designs
Description
Recalls Jones and Goos JQT Estimation Equivalent Response Surface Designs for 2 whole plot factors and 1 sub-plot factor from a catalog
Usage
EEw2s1(des, randomize=FALSE)
Arguments
des |
input- a character variable containing the name of a design in the catalog. If left blank, the function prints a table showing all the design names in the catalog |
randomize |
input- a logical |
Value
design
Author(s)
John Lawson
References
Jones, B. and Goos, P.(2012) "An Algorithm for Finding D-Efficient Equivalent-Estimation Second-Order Split Plot Designs", Journal of Quality Technology, Vol 44, No. 4, pp281-303, 2012.
D-efficient Estimation Equivalent Response Surface Designs
Description
Recalls Jones and Goos JQT Estimation Equivalent Response Surface Designs for 2 whole plot factors and 1 sub-plot factor from a catalog
Usage
EEw2s2(des, randomize=FALSE)
Arguments
des |
input- a character variable containing the name of a design in the catalog. If left blank, the function prints a table showing all the design names in the catalog |
randomize |
input- a logical |
Value
design
Author(s)
John Lawson
References
Jones, B. and Goos, P.(2012) "An Algorithm for Finding D-Efficient Equivalent-Estimation Second-Order Split Plot Designs", Journal of Quality Technology, Vol 44, No. 4, pp281-303, 2012.
D-efficient Estimation Equivalent Response Surface Designs
Description
Recalls Jones and Goos JQT Estimation Equivalent Response Surface Designs for 2 whole plot factors and 1 sub-plot factor from a catalog
Usage
EEw2s3(des, randomize=FALSE)
Arguments
des |
input- a character variable containing the name of a design in the catalog. If left blank, the function prints a table showing all the design names in the catalog |
randomize |
input- a logical |
Value
design
Author(s)
John Lawson
References
Jones, B. and Goos, P.(2012) "An Algorithm for Finding D-Efficient Equivalent-Estimation Second-Order Split Plot Designs", Journal of Quality Technology, Vol 44, No. 4, pp281-303, 2012.
D-efficient Estimation Equivalent Response Surface Designs
Description
Recalls Jones and Goos JQT Estimation Equivalent Response Surface Designs for 3 whole plot factors and 1-2 sub-plot factors from a catalog
Usage
EEw3(des, randomize=FALSE)
Arguments
des |
input- a character variable containing the name of a design in the catalog. If left blank, the function prints a table showing all the design names in the catalog |
randomize |
input- a logical |
Value
design
Author(s)
John Lawson
References
Jones, B. and Goos, P.(2012) "An Algorithm for Finding D-Efficient Equivalent-Estimation Second-Order Split Plot Designs", Journal of Quality Technology, Vol 44, No. 4, pp281-303, 2012.
F-Distribution critical values
Description
Gets F-distribution critical values
Usage
Fcrit(alpha, nu1, nu2)
Arguments
alpha |
input- right tail area beyond critical value |
nu1 |
input - numerator degrees of freedom for F-distribution |
nu2 |
input - denominator degrees of freedom for F-distribution |
Value
returned critical value
Author(s)
John Lawson
An Effective Design Based Model Fitting Method for Definitive Screening Designs
Description
This function performs fits a model to a Definitive Screeing Design by first restricting main effects to the smallest main effects and those significant at at least the .20 level in a main effects model. Next forward stepwise selection is used to enter 2 factor interactions and quadratic effects.
Usage
FitDefSc(y,design,alpha=.05)
Arguments
y |
input - this is a vector containing a single numeric column of response data. |
design |
input - this is a data frame containing the numeric columns of the candidate independent variables created by the DefScreen function with only numerical factors i.e. c=0. The factor names or colnames(design) should always be of length 1 (for example letters of the alphabet "A", "B", etc.) |
alpha |
input - alpha to enter in the forward stepwise regression with second order candidates should be between 0.05 and 0.20 |
Author(s)
John Lawson
F-Distribution Power Calculation
Description
Calculates the power for the non-central F-distribution
Usage
Fpower(alpha, nu1, nu2, nc)
Arguments
alpha |
input - critical value alpha |
nu1 |
input - degrees of freedom for numerator |
nu2 |
input - degrees of freedom for denominator |
nc |
input - noncentrality parameter |
Value
probability of exceeding fcrit(alpha, nu1,nu2) with the non-central F-distribution with nu1 and nu2 degrees of freedom and noncentrality parameter nc
Author(s)
John Lawson
F-Distribution Power Calculation
Description
Calculates the power for one-way ANOVA
Usage
Fpower1(alpha,nlev,nreps,Delta,sigma)
Arguments
alpha |
input - significance level of the F-test. |
nlev |
input - the number of levels of the factor |
nreps |
input - the number of replicates in each level of the factor. |
Delta |
input - the size of a practical difference in two cell means. |
sigma |
input - the standard deviation of the experimental error. |
Value
probability of exceeding fcrit(alpha, nu1,nu2) with the non-central F-distribution with nu1 and nu2 degrees of freedom and noncentrality parameter nc
Author(s)
John Lawson
F-Distribution Power Calculation
Description
Calculates the power for a two-way ANOVA
Usage
Fpower2(alpha,nlev,nreps,Delta,sigma)
Arguments
alpha |
input - significance level of the F-test. |
nlev |
input - vector of length two containing the number of levels of the factors. |
nreps |
input - the the number of replicates in each combination of factor levels. |
Delta |
input - the size of a practical difference in two marginal factor level means. |
sigma |
input - the standard deviation of the experimental error. |
Value
probability of exceeding fcrit(alpha, nu1,nu2) with the non-central F-distribution with nu1 and nu2 degrees of freedom and noncentrality parameter nc
Author(s)
John Lawson
This function uses Daniel's Method to find an outlier in an unreplicated 2^{(k-p)} design.
Description
This function uses Daniel's Method to find an outlier in an unreplicated 2^{(k-p)} design.
Usage
Gaptest(DesY)
Arguments
DesY |
input this is a data frame containing an unreplicated |
Author(s)
John Lawson
References
Box, G.E.P. (1991) "George's column: Finding bad values in factorial designs", Quality Engineering, 3, 249-254.
RSM forward regression keeping model hierarchy
Description
This function performs a hierarchical forward stepwise regression. If an interaction or quadratic term is entered in the model, the parent main effects are also entered into the model.
Usage
HierAFS(y,x,m,c,step)
Arguments
y |
input - this is a vector containing a single numeric column of response data. |
x |
input - this is a data frame containing the numeric columns of the candidate independent variables. The m three-level factors always preceed the c two-level factors in the design. The factor names or colnames(x) should always be of length (for example letters of the alphabet "A", "B", etc.) |
m |
input - this is an integer equal to the number of three-level factors in the design |
c |
input - this is an integer equal to the number of two-level factors in the design. Note m+c must be equal to the number of columns of des. |
step |
input - this is a single numeric value containing the n umber of steps requested. |
Value
returned data frame the first column is a factor variable containing the formula for the model fit at each step, the second numeric column is the R-square statistic for the model fit with each formula.
Author(s)
Gerhard Krennrich, and modified by John Lawson
This function uses the LGB Method to detect significant effects in unreplicated fractional factorials.
Description
This function uses the LGB Method to detect significant effects in unreplicated fractional factorials.
Usage
LGB(Beta, alpha = 0.05, rpt = TRUE, plt = TRUE, pltl = TRUE)
Arguments
Beta |
input - this is the numeric vector of effects or coefficients to be tested |
alpha |
input - This is the significance level of the test |
rpt |
input - this is a logical variable that controls whether the report is written (default is TRUE) |
plt |
input - this is a logical variable that controls whether a half-normal plot is made (default is TRUE) |
pltl |
input - this is a logical variable that controls whether the significance limit line is drawn on the half-normal plot (default is TRUE) |
Author(s)
John Lawson
References
Lawson, J., Grimshaw, S., Burt, J. (1998) "A quantitative method for identifying active contrasts in unreplicated factorial experiments based on the half-normal plot", Computational Statistics and Data Analysis, 26, 425-436.
This function does the calculations for the LGB Method to detect significant effects in unreplicated fractional factorials.
Description
This function uses the LGB Method to detect significant effects in unreplicated fractional factorials.
Usage
LGBc(Beta, alpha = 0.05, rpt = TRUE, plt = TRUE, pltl = TRUE)
Arguments
Beta |
input - this is the numeric vector of effects or coefficients to be tested |
alpha |
input - This is the significance level of the test |
rpt |
input - this is a logical variable that controls whether the report is written (default is TRUE) |
plt |
input - this is a logical variable that controls whether a half-normal plot is made (default is TRUE) |
pltl |
input - this is a logical variable that controls whether the significance limit line is drawn on the half-normal plot (default is TRUE) |
Author(s)
John Lawson
References
Lawson, J., Grimshaw, S., Burt, J. (1998) "A quantitative method for identifying active contrasts in unreplicated factorial experiments based on the half-normal plot", Computational Statistics and Data Analysis, 26, 425-436.
Lenth's Plot of Effects
Description
Plot of the factor effects with significance levels based on robust estimation of contrast standard errors.
Usage
LenthPlot(obj, alpha = 0.05, plt = TRUE, limits = TRUE,
xlab = "factors", ylab = "effects", faclab = NULL, cex.fac = graphics::par("cex.lab"),
cex.axis=graphics::par("cex.axis"), adj = 1, ...)
Arguments
obj |
object of class |
alpha |
numeric. Significance level used for the margin of error (ME) and simultaneous margin of error (SME). See Lenth(1989). |
plt |
logical. If |
limits |
logical. If |
xlab |
character string. Used to label the x-axis. "factors" as default. |
ylab |
character string. Used to label the y-axis. "effects" as default. |
faclab |
list with components |
cex.fac |
numeric. Character size used for the factor labels. |
cex.axis |
numeric. Character size used for the axis. |
adj |
numeric between 0 and 1. Determines where to place the
"ME" (margin of error) and the "SME" (simultaneous margin of error) labels
(character size of 0.9* |
... |
extra parameters passed to |
Details
If obj is of class lm, 2*coef(obj) is used as factor
effect with the intercept term removed. Otherwise, obj should be a
vector with the factor effects. Robust estimate of the contrasts standard
error is used to calculate marginal (ME) and simultaneous margin
of error (SME) for the provided significance (1 - alpha) level.
See Lenth(1989). Spikes are used to display the factor effects.
If faclab is NULL, factors are labelled with the effects or
coefficient names. Otherwise, those faclab\$idx factors are labelled
as faclab\$lab. The rest of the factors are blanked.
Value
The function is called mainly for its side effect. It returns a vector with the value of alpha used, the estimated PSE, ME and SME.
Author(s)
Ernesto Barrios. Extension provided by Kjetil Kjernsmo (2013).
References
Lenth, R. V. (1989). "Quick and Easy Analysis of Unreplicated Factorials". Technometrics Vol. 31, No. 4. pp. 469–473.
mixture process variable experiment with mayonnaise
Description
Data from the mixture process variable experiment with mayonnaise in chapter 11 of Design and Analysis of Experiments with R
Usage
data(MPV)
Format
A data frame with 35 observations on the following 4 variables.
x1a numeric vector
x2a numeric vector
x3a numeric vector
z1a numeric vector
z2a numeric vector
ya numeric vector
Source
Design and Analysis of Experiments with R, by John Lawson, CRC/Chapman Hall
Examples
data(MPV)
Model Robust Factorial Designs
Description
Recalls Li and Nachtsheim's model robust factorial designs from a catalog of data frames
Usage
ModelRobust(des, randomize=FALSE)
Arguments
des |
input- a character variable containing the name of a design in the catalog. If left blank, the function prints a table showing all the design names in the catalog |
randomize |
input- a logical |
Value
design
Author(s)
John Lawson
References
Li, W. and Nachtsheim, C. J. (2000) "Model Robust factorial Designs", Technometrics, Vol 42, No. 4, pp345-352, 2000.
Yields of naphthalene black
Description
Data from the Yields of naphthalene black of Chapter 5 in Design and Analysis of Experiments with R
Usage
data(Naph)
Format
A data frame with 30 observations on the following 2 variables.
samplea factor with levels
123456yielda numeric vector
Source
Design and Analysis of Experiments with R, by John Lawson, CRC/Chapman Hall
Examples
data(Naph)
Optimum Plackett-Burman Designs
Description
Selects the columns from a Plackett-Burman Design Produced by FrF2 that will minimize model dependence for main effects and two factor interactions and returns the design in a data frame
Usage
OptPB(nruns, nfactors, randomize=FALSE)
Arguments
nruns |
input- an integer representing the number of runs in the design |
nfactors |
input - in integer representing the number of factors in the design |
randomize |
input - logical |
Value
design
Author(s)
John Lawson
References
Fairchild, K. (2011) "Screening Designs that Minimize Model Dependence", MS Project Department of Statistics Brigham Young University, Dec. 2011.
Plackett-Burman Designs
Description
Creates a 12, 20, or 24 run Plackett-Burman design in a data frame with numeric factor levels by cyclically rotating the factor leves in the first row
Usage
PBDes(nruns, nfactors, randomize=FALSE)
Arguments
nruns |
input- an integer representing the number of runs in the design |
nfactors |
input - in integer representing the number of factors in the design |
randomize |
input - logical |
Value
design
Author(s)
John Lawson
References
Lawson, J. (2015) "Design and Analysis of Experiments with R page 229",CRC Press, Boca Raton, 2015.
Cattle rations design experiment data from Table 10.16
Description
Data from the cattle rations design experiment in chapter 10 of Design and Analysis of Experiments with R
Usage
data(Rations)
Format
A data frame with 45 observations on the following 4 variables.
Blocka factor with levels
12345678x1a numeric vector
x2a numeric vector
ADGa numeric vector
Source
Design and Analysis of Experiments with R, by John Lawson, CRC/Chapman Hall
Examples
data(Rations)
Split-plot mixture process variable experiment with vinyl
Description
Data from the Split-plot mixture process variable experiment with vinyl in chapter 10 of Design and Analysis of Experiments with R
Usage
data(SPMPV)
Format
A data frame with 28 observations on the following 7 variables.
wpa factor with levels
1234567z1a numeric vector
z2a numeric vector
x1a numeric vector
x2a numeric vector
x3a numeric vector
ya numeric vector
Source
Design and Analysis of Experiments with R, by John Lawson, CRC/Chapman Hall
Examples
data(SPMPV)
Single array for starting motor experiment
Description
Data from the single array for starting motor experiment in chapter 12 of Design and Analysis of Experiments with R
Usage
data(Smotor)
Format
A data frame with 18 observations on the following 6 variables.
Aa factor with levels
12Ba factor with levels
123Ca factor with levels
123Da factor with levels
123Ea factor with levels
12torquea numeric vector
Source
Design and Analysis of Experiments with R, by John Lawson, CRC/Chapman Hall
Examples
data(Smotor)
Tetracycline concentration in plasma
Description
Data from the Tetracycline concentration in plasma study in chapter 10 of Design and Analysis of Experiments with R (compact format)
Usage
data(Tet)
Format
A data frame with 9 observations on the following 2 variables.
Timea numeric vector
Conca numeric vector
Source
Design and Analysis of Experiments with R, by John Lawson, CRC/Chapman Hall
Examples
data(Tet)
Box-Behnken design for trebuchet experiment
Description
Data from the Box-Behnken design for trebuchet experiment in chapter 10 of Design and Analysis of Experiments with R
Usage
data(Treb)
Format
A data frame with 15 observations on the following 4 variables.
x1a numeric vector
x2a numeric vector
x3a numeric vector
ya numeric vector
Source
Design and Analysis of Experiments with R, by John Lawson, CRC/Chapman Hall
Examples
data(Treb)
This function performs Tukey's single degree of freedom test for interaction in an unreplicated two-factor design
Description
This function performs Tukey's single degree of freedom test for interaction in an unreplicated two-factor design
Usage
Tukey1df(data)
Arguments
data |
input - this is a data frame with three variables, the first variable is a numeric response and next two variables are factors. There should be |
Author(s)
John Lawson
Table 12.24 Experiment with Weld Tensile Strength
Description
Data from the Single Array Experiment in Exercise 5 of Chapter 12 in Design and Analysis of Experiments with R. The factors are in coded levels.
Usage
data(WeldS)
Format
A data frame with 16 observations on the following 16 variables.
Da numeric vector
Ha numeric vector
Ga numeric vector
Aa numeric vector
Fa numeric vector
GHa numeric vector
Ca numeric vector
Ba numeric vector
Ja numeric vector
Ea numeric vector
ACa numeric vector
AHa numeric vector
AGa numeric vector
e1a numeric vector
e2a numeric vector
ya numeric vector
Source
Design and Analysis of Experiments with R, by John Lawson, CRC/Chapman Hall
Examples
data(WeldS)
Two-period crossover study of antifungal agent
Description
Data from the Two-period crossover study of an antifungal agent in chapter 9 of Design and Analysis of Experiments with R
Usage
data(antifungal)
Format
A data frame with 34 observations on the following 5 variables.
Groupa factor with levels
12Subjecta factor with levels
1234567891011121415161718Perioda factor with levels
12Treata factor with levels
ABpla numeric vector
Source
Design and Analysis of Experiments with R, by John Lawson, CRC/Chapman Hall
Examples
data(antifungal)
Confounded apple slice browning experiment
Description
Data from the confounded apple slice browning experiment in chapter 7 of Design and Analysis of Experiments with R
Usage
data(apple)
Format
A data frame with 24 observations on the following 4 variables.
Blocka factor with levels
1234Aa factor with levels
0123Ba factor with levels
012ratinga numeric vector containing the response
Source
Design and Analysis of Experiments with R, by John Lawson, CRC/Chapman Hall
Examples
data(apple)
2^{(7-3)} arsenic removal experiment
Description
Data from the 2^{(7-3)} arsenic removal experiment in chapter 6 of Design and Analysis
of Experiments with R
Usage
data(arso)
Format
A data frame with 8 observations on the following 8 variables.
Aa factor with levels
-11Ba factor with levels
-11Ca factor with levels
-11Da factor with levels
-11Ea factor with levels
-11Fa factor with levels
-11Ga factor with levels
-11y1a numeric vector
Source
Design and Analysis of Experiments with R, by John Lawson, CRC/Chapman Hall
Examples
data(arso)
2^{(7-3)} arsenic removal experiment augmented with mirror image
Description
Data from the 2^{(7-3)} arsenic removal experiment augmented with mirror image in chapter 6 of Design and Analysis
of Experiments with R
Usage
data(augm)
Format
A data frame with 8 observations on the following 8 variables.
Aa factor with levels
-11Ba factor with levels
-11Ca factor with levels
-11folda factor with levels
originalmirrorDa factor with levels
-11Ea factor with levels
-11Fa factor with levels
-11Ga factor with levels
-11ya numeric vector
Source
Design and Analysis of Experiments with R, by John Lawson, CRC/Chapman Hall
Examples
data(augm)
mouse liver enzyme experiment
Description
Data from the mouse liver enzyme experiment in chapter 4 of Design and Analysis of Experiments with R
Usage
data(bha)
Format
A data frame with 16 observations on the following 4 variables.
blocka factor with levels
12straina factor with levels
A/J129O1aNIHBALB/ctreata factor with levels
treatedcontrolya numeric vector
Source
Design and Analysis of Experiments with R, by John Lawson, CRC/Chapman Hall
Examples
data(bha)
Extra-period crossover bioequivalence study
Description
Data from the extra-period crossover bioequivalence study in chapter 9 of Design and Analysis of Experiments with R
Usage
data(bioequiv)
Format
A data frame with 108 observations on the following 5 variables.
Groupa factor with levels
12Subjecta factor with levels
123456789101112131415161718192123242526272830313233343536120122129Perioda factor with levels
123Treata factor with levels
ABCarrya factor with levels
noneABya numeric vector
Source
Design and Analysis of Experiments with R, by John Lawson, CRC/Chapman Hall
Examples
data(bioequiv)
Latin Square bioequivalence experiment
Description
Data from the Latin Square bioequivalence experiment in chapter 4 of Design and Analysis of Experiments with R
Usage
data(bioeqv)
Format
A data frame with 9 observations on the following 4 variables.
Perioda factor with levels
123Subjecta factor with levels
123Treata factor with levels
ABCAUCa numeric vector
Source
Design and Analysis of Experiments with R, by John Lawson, CRC/Chapman Hall
Examples
data(bioeqv)
Variance component study of calcium in blood serum
Description
Data from the Variance component study of calcium in blood serum in chapter 5 of Design and Analysis of Experiments with R
Usage
data(blood)
Format
A data frame with 27 observations on the following 3 variables.
sola factor with levels
1234laba factor with levels
ABCcalciuma numeric vector
Source
Design and Analysis of Experiments with R, by John Lawson, CRC/Chapman Hall
Examples
data(blood)
Bread rise experiment data from Chapter 2
Description
Data from the bread rise experiment in chapter 2 of Design and Analysis of Experiments with R
Usage
data(bread)
Format
A data frame with 12 observations on the following 3 variables.
loafa numeric vector
timea numeric vector
heighta numeric vector
Source
Design and Analysis of Experiments with R, by John Lawson, CRC/Chapman Hall
Examples
data(bread)
Split-Plot response surface for cake baking experiment
Description
Data from the Split-Plot response surface for cake baking experiment in chapter 10 of Design and Analysis of Experiments with R
Usage
data(cakeb)
Format
A data frame with 11 observations on the following 6 variables.
Ovenruna factor with levels
1234x1a numeric vector
x2a numeric vector
ya numeric vector
x1sqa numeric vector
x2sqa numeric vector
Source
Design and Analysis of Experiments with R, by John Lawson, CRC/Chapman Hall
Examples
data(cakeb)
CCD design for cement workability experiment
Description
Data from the CCD design for cement workability experiment in chapter 10 of Design and Analysis of Experiments with R
Usage
data(cement)
Format
A data frame with 20 observations on the following 4 variables.
Blocka factor with levels
12x1a numeric vector
x2a numeric vector
x3a numeric vector
ya numeric vector
Source
Design and Analysis of Experiments with R, by John Lawson, CRC/Chapman Hall
Examples
data(cement)
Chemical process experiment data from Chapter 3
Description
Data from the Chemical process experiment in chapter 3 of Design and Analysis of Experiments with R
Usage
data(chem)
Format
A data frame with 16 observations on the following 4 variables.
Aa numeric vector containing the coded (-1,1) levels of factor A
Ba numeric vector containing the coded (-1,1) levels of factor B
Ca numeric vector containing the coded (-1,1) levels of factor C
Da numeric vector containing the coded (-1,1) levels of factor D
ya numeric vector containing the response
Source
Design and Analysis of Experiments with R, by John Lawson, CRC/Chapman Hall
Examples
data(chem)
Williams' crossover design for sprinting experiment
Description
Data from the Williams' crossover design for sprinting experiment in chapter 9 of Design and Analysis of Experiments with R
Usage
data(chipman)
Format
A data frame with 36 observations on the following 5 variables.
Squarea factor with levels
12Groupa factor with levels
123Subjecta factor with levels
123456789101112Perioda factor with levels
123Treata factor with levels
123Carrya factor with levels
0123Timea numeric vector
Source
Design and Analysis of Experiments with R, by John Lawson, CRC/Chapman Hall
Examples
data(chipman)
This function makes a colormap of correlations in a design matrix
Description
This function makes a colormap of the correlations of a design matrix stored in the data frame design
Usage
colormap(design, mod)
Arguments
design |
input - a data frame containing columns of the numeric factor levels |
mod |
input - a number indicationg the model for the colormap 1 = linear model containing only the terms in the dataframe 2 = linear model plus two factor interactions 3 = linear model plus 2 and 3 factor interactions 4 = linear model plus 2, 3, and 4 factor interactions |
Author(s)
John Lawson
Examples
## The function is currently defined as
function(design,mod) {
##################### Inputs ###########################################
# design - a data frame containing columns of the numeric factor levels
# mod - the model for the color plot of correlations
# 1 = Linear model containing only the terms in the data frame
# 2 = Linear model plus two factor interactions
# 3 = Linear model plus 2 and 3 factor interactions
# 4 = Linear model plus 2, 3 and 4 factor interactions
########################################################################
y<-runif(nrow(design),0,1)
if(mod==1) {test <- model.matrix(lm(y~(.),data=design))}
if(mod==2) {test <- model.matrix(lm(y~(.)^2,data=design))}
if(mod==3) {test <- model.matrix(lm(y~(.)^3,data=design))}
if(mod==4) {test <- model.matrix(lm(y~(.)^4,data=design))}
names<-colnames(test)
names<-gsub(':','',names)
names<-gsub('1','',names)
colnames(test)<-names
cmas<-abs(cor(test[,ncol(test):2]))
cmas<-cmas[c((ncol(cmas)):1), ]
rgb.palette <- colorRampPalette(c("white", "black"), space = "rgb")
levelplot(cmas, main="Map of absolute correlations", xlab="", ylab="", col.regions=rgb.palette(120),
cuts=100, at=seq(0,1,0.01),scales=list(x=list(rot=90))) }
Table 12.21 Experiment with Elastometric Connector
Description
Data from the Single Array Experiment with an Elastometric Connector in Chapter 12 of Design and Analysis of Experiments with R. The control and noise factors are in coded levels.
Usage
data(connector)
Format
A data frame with 32 observations on the following 8 variables.
Aa numeric vector
Ba numeric vector
Ca numeric vector
Da numeric vector
Ea numeric vector
Fa numeric vector
Ga numeric vector
ya numeric vector
Source
Design and Analysis of Experiments with R, by John Lawson, CRC/Chapman Hall
Examples
data(connector)
Control factor array and summary statistics for controller circuit design experiment
Description
Data from the control factor array and summary statistics for controller circuit design experiment in chapter 12 of Design and Analysis of Experiments with R
Usage
data(cont)
Format
A data frame with 18 observations on the following 6 variables.
Aa numeric vector
Ba numeric vector
Ca numeric vector
Da numeric vector
Fa numeric vector
lns2a numeric vector
Source
Design and Analysis of Experiments with R, by John Lawson, CRC/Chapman Hall
Examples
data(cont)
Split-plot response surface for ceramic pipe experiment
Description
Data from the Split-plot response surface for ceramic pipe experiment in chapter 10 of Design and Analysis of Experiments with R
Usage
data(cpipe)
Format
A data frame with 48 observations on the following 6 variables.
WPa factor with levels
123456789101112Aa numeric vector
Ba numeric vector
Pa numeric vector
Qa numeric vector
ya numeric vector
Source
Design and Analysis of Experiments with R, by John Lawson, CRC/Chapman Hall
Examples
data(cpipe)
paecilomyces variotii culture experiment
Description
Data from the paecilomyces variotii culture experiment experiment in chapter 6 of Design and Analysis of Experiments with R
Usage
data(culture)
Format
A data frame with 16 observations on the following 9 variables.
Aa factor with levels
-11Ba factor with levels
-11Ca factor with levels
-11Da factor with levels
-11Ea factor with levels
-11Fa factor with levels
-11Ga factor with levels
-11Ha factor with levels
-11y1a numeric vector
Source
Design and Analysis of Experiments with R, by John Lawson, CRC/Chapman Hall
Examples
data(culture)
Repeated measures study with dairy cow diets
Description
Data from the Repeated measures study with dairy cow diets in chapter 9 of Design and Analysis of Experiments with R (compact format)
Usage
data(dairy)
Format
A data frame with 120 observations on the following 5 variables.
Dieta factor with levels
"Barley""Mixed""Lupins"pr1a numeric vector
pr2a numeric vector
pr3a numeric vector
pr4a numeric vector
Source
Design and Analysis of Experiments with R, by John Lawson, CRC/Chapman Hall
Examples
data(dairy)
Data from rat behavior experiment in Chapter 4
Description
Data from rat behavior experiment in Chapter 4 of Design and Analysis of Experiments with R
Usage
data(drug)
Format
A data frame with 50 observations on the following 3 variables.
rata factor with levels
12345678910dosea factor with levels
0.00.51.01.52.0ratea numeric vector
Source
Design and Analysis of Experiments with R, by John Lawson, CRC/Chapman Hall
Examples
data(drug)
Single array and raw response for silicon layer growth experiment
Description
Data from the single array and raw response for silicon layer growth experiment in chapter 12 of Design and Analysis of Experiments with R
Usage
data(eptaxr)
Format
A data frame with 64 observations on the following 9 variables.
Aa numeric vector
Ba numeric vector
Ca numeric vector
Da numeric vector
Ea numeric vector
Fa numeric vector
Ga numeric vector
Ha numeric vector
ya numeric vector
Source
Design and Analysis of Experiments with R, by John Lawson, CRC/Chapman Hall
Examples
data(eptaxr)
Control array and variance of response for silicon layer growth experiment
Description
Data from the control array and variance of response for silicon layer growth experiment in chapter 12 of Design and Analysis of Experiments with R
Usage
data(eptaxs2)
Format
A data frame with 16 observations on the following 9 variables.
Aa numeric vector
Ba numeric vector
Ca numeric vector
Da numeric vector
Ea numeric vector
Fa numeric vector
Ga numeric vector
Ha numeric vector
s2a numeric vector
Source
Design and Analysis of Experiments with R, by John Lawson, CRC/Chapman Hall
Examples
data(eptaxs2)
Control array and mean response for silicon layer growth experiment
Description
Data from the control array and mean response for silicon layer growth experiment in chapter 12 of Design and Analysis of Experiments with R
Usage
data(eptaxyb)
Format
A data frame with 16 observations on the following 9 variables.
Aa numeric vector
Ba numeric vector
Ca numeric vector
Da numeric vector
Ea numeric vector
Fa numeric vector
Ga numeric vector
Ha numeric vector
ybara numeric vector
Source
Design and Analysis of Experiments with R, by John Lawson, CRC/Chapman Hall
Examples
data(eptaxyb)
Subsequent steps in a forward stepwise regression that preserves model hierarchy
Description
This function performs a single step of a hierarchical forward stepwise regression by entering additional term(s) to a model already created by ihstep or fhstep. If an interaction or quadratic term is entered first, the parent main effects are also entered into the model. This function is called by HierAFS.R
Usage
fhstep(y,des,m,c,prvm)
Arguments
y |
input - this is a data frame containing a single numeric column of response data. |
des |
input - this is a data frame containing the numeric columns of the candidate independent variables. The column names of des are of length 1 i.e., letters of the alphabet. The m three-level factors always preceed the c two-level factors in the design. |
m |
input - this is an integer equal to the number of three-level factors in the design |
c |
input - this is an integer equal to the number of two-level factors in the design. Note m+c must be equal to the number of columns of des. |
prvm |
input - this is a vector of text names of the terms in the model. This is created as the value resulting from running ihstep or fhstep. |
Value
returned vector of terms entered in the model at this step.
Author(s)
John Lawson
Forward Stepwise modeling taking into account special structure of Definitive Screening Design
Description
This function performs a single step of a forward stepwise regression by entering an additional 2nd order term to a model already created by FitDefSc.R or fhstepDS.R This function is called by FitDefSc.R
Usage
fhstepDS(y,des,m,c,prvm)
Arguments
y |
input - this is a data frame containing a single numeric column of response data. |
des |
input - this is a data frame containing the numeric columns of the candidate independent variables. The column names of des are of length 1 i.e., letters of the alphabet. The m three-level factors always preceed the c two-level factors in the design. |
m |
input - this is an integer equal to the number of three-level factors in the design |
c |
input - this is an integer equal to the number of two-level factors in the design. Note m+c must be equal to the number of columns of des. |
prvm |
input - this is a vector of text names of the terms in the model. This is created as the value resulting from running ihstep or fhstep. |
Value
returned vector of terms entered in the model at this step.
Author(s)
John Lawson
Find first term to enter forward stepwise regression that preserves model hierarchy
Description
This function finds the first term to enter a hierarchical forward stepwise regression. If the term is an interaction or quadratic term, the parent main effects are also included. This function is called by ihstep.R
Usage
firstm(y,des)
Arguments
y |
input - this is a data frame containing a single numeric column of response data. |
des |
input - this is a data frame containing the numeric columns of the candidate independent variables. The column names of des are of length 1. The m three-level factors always preceed the c two-level factors in the design. |
Value
returned vector of terms to be entered in the model at the first step.
Author(s)
John Lawson
Find first term to enter forward stepwise regression that preserves model hierarchy
Description
This function finds the first term to enter a hierarchical forward stepwise regression. If the term is an interaction or quadratic term, the parent main effects are also included. This function is called by ihstep.R
Usage
fnextrm(y,des,prvm)
Arguments
y |
input - this is a data frame containing a single numeric column of response data. |
des |
input - this is a data frame containing the numeric columns of the candidate independent variables. The column names of des are of length 1. The m three-level factors always preceed the c two-level factors in the design. |
prvm |
input - this is a vector of text names of the terms in the model. This is created as the value resulting from running ihstep or fhstep. |
Value
returned vector of terms to be entered in the model at the next step.
Author(s)
John Lawson
Find first term to enter forward stepwise regression that preserves model hierarchy
Description
This function finds the first term to enter a hierarchical forward stepwise regression. If the term is an interaction or quadratic term, the parent main effects are also included. This function is called by ihstep.R
Usage
fntrmDS(y,des,prvm)
Arguments
y |
input - this is a data frame containing a single numeric column of response data. |
des |
input - this is a data frame containing the numeric columns of the candidate independent variables. The column names of des are of length 1. The m three-level factors always preceed the c two-level factors in the design. |
prvm |
input - this is a vector of text names of the terms in the model. This is created as the value resulting from running ihstep or fhstep. |
Value
returned vector of terms to be entered in the model at the next step.
Author(s)
John Lawson
This function makes a full normal plot of the elements of the vector called effects
Description
This function makes a full normal plot of the elements of the vector called effects
Usage
fullnormal(effects, labs, alpha = 0.05, refline = "TRUE")
Arguments
effects |
input - vector of effects to be plotted |
labs |
input - vector of labels of the effects to be plotted |
alpha |
input - alpha level for labeling of significant effects using Lenth statistic |
refline |
input - logical variable that indicates whether a reference line is added to the plot (default is "TRUE") |
Author(s)
John Lawson
Gauge R&R Study
Description
Data from the Gauge R&R Study in chapter 5 of Design and Analysis of Experiments with R
Usage
data(gagerr)
Format
A data frame with 60 observations on the following 3 variables.
parta factor with levels
12345678910opera factor with levels
123ya numeric vector
Source
Design and Analysis of Experiments with R, by John Lawson, CRC/Chapman Hall
Examples
data(gagerr)
This function computes the gap statistic which is used to test for an outlier using Daniels method
Description
This function computes the gap statistic which is used to test for an outlier using Daniels method
Usage
gapstat(beta, pse)
Arguments
beta |
input - vector of coefficients from saturated model fit to the data |
pse |
input - Lenth's PSE statistic calculated from the elements of beta |
Value
returned gap statistic
Author(s)
John Lawson
Unreplicated split-plot fractional-factorial experiment on geometric distortion of drive gears
Description
Data from the unreplicated split-plot fractional-factorial experiment on geometric distortion of drive gears in chapter 8 of Design and Analysis of Experiments with R
Usage
data(gear)
Format
A data frame with 16 observations on the following 6 variables.
Aa factor with levels
-11Ba factor with levels
-11Ca factor with levels
-11Pa factor with levels
-11Qa factor with levels
-11ya numeric vector containing the response
Source
Design and Analysis of Experiments with R, by John Lawson, CRC/Chapman Hall
Examples
data(gear)
This function makes a half normal plot of the elements of the vector called effects
Description
This function makes a half normal plot of the elements of the vector called effects
Usage
halfnorm(effects, labs, alpha = 0.05, refline = "TRUE")
Arguments
effects |
input - vector of effects to be plotted |
labs |
input - vector of labels of the effects to be plotted |
alpha |
input - alpha level for labeling of significant effects using Lenth statistic |
refline |
input - logical variable that indicates whether a reference line is added to the plot (default is "TRUE") |
Author(s)
John Lawson
low grade hardwood conjoint study
Description
Data from the low grade hardwood conjoint study in chapter 6 of Design and Analysis of Experiments with R
Usage
data(hardwood)
Format
A data frame with 12 observations on the following 5 variables.
Designa factor with levels
"RC""AC""OCI""OCII"Pricea numeric variable
Densitya factor with levels
"Clear""Heavy""Medium"Guaranteea factor with levels
"1y""Un"Ratinga numeric vector
Source
Design and Analysis of Experiments with R, by John Lawson, CRC/Chapman Hall
Examples
data(hardwood)
First step in a forward stepwise regression that preserves model hierarchy
Description
This function performs the first step of a hierarchical forward stepwise regression. If an interaction or quadratic term is entered first, the parent main effects are also entered into the model. This function is called by HierAFS.R
Usage
ihstep(y,des,m,c)
Arguments
y |
input - this is a data frame containing a single numeric column of response data. |
des |
input - this is a data frame containing the numeric columns of the candidate independent variables. The column names of des are of length 1 i.e., letters of the alphabet. The m three-level factors always preceed the c two-level factors in the design. |
m |
input - this is an integer equal to the number of three level factors in the design |
c |
input - this is an integer equal to the number of two level factors in the design. Note m+c must be equal to the number of columns of des. |
Value
returned vector of terms entered in the model at this step.
Author(s)
John Lawson
Single array for injection molding experiment
Description
Data from the single array for injection molding experiment in chapter 12 of Design and Analysis of Experiments with R
Usage
data(inject)
Format
A data frame with 20 observations on the following 8 variables.
Aa numeric vector
Ba numeric vector
Ca numeric vector
Da numeric vector
Ea numeric vector
Fa numeric vector
Ga numeric vector
shrinkagea numeric vector
Source
Design and Analysis of Experiments with R, by John Lawson, CRC/Chapman Hall
Examples
data(inject)
Interleave vectors
Description
interleaves two vectors
Usage
interleave(v1,v2)
Arguments
v1 |
input - first vector |
v2 |
input - second vector |
Value
vector
Mod function
Description
Gets mod of a to base b
Usage
mod(a,b)
Arguments
a |
input- an integer |
b |
input - an integer |
Value
remainder of a/b or mod(a,b)
Author(s)
John Lawson
Blocked response surface design for pastry dough experiment
Description
Data from the Blocked response surface design for pastry dough experiment in chapter 10 of Design and Analysis of Experiments with R
Usage
data(pastry)
Format
A data frame with 28 observations on the following 5 variables.
Blocka factor with levels
1234567x1a numeric vector
x2a numeric vector
x3a numeric vector
ya numeric vector
Source
Design and Analysis of Experiments with R, by John Lawson, CRC/Chapman Hall
Examples
data(pastry)
Pesticide formulation experiment
Description
Data from the Pesticide formulation experiment in chapter 11 of Design and Analysis of Experiments with R
Usage
data(pest)
Format
A data frame with 13 observations on the following 4 variables.
x1a numeric vector
x2a numeric vector
x3a numeric vector
ya numeric vector
Source
Design and Analysis of Experiments with R, by John Lawson, CRC/Chapman Hall
Examples
data(pest)
pesticide application experiment
Description
Data from the pesticide application experiment in chapter 5 of Design and Analysis of Experiments with R
Usage
data(pesticide)
Format
A data frame with 16 observations on the following 4 variables.
forma factor with levels
ABtecha factor with levels
12plota factor with levels
12residuea numeric vector
Source
Design and Analysis of Experiments with R, by John Lawson, CRC/Chapman Hall
Examples
data(pesticide)
Unreplicated split-plot 2^5 experiment on plasma treatment of paper
Description
Data from the unreplicated split-plot 2^5 experiment on plasma treatment of paper in chapter 8 of Design and Analysis
of Experiments with R
Usage
data(plasma)
Format
A data frame with 32 observations on the following 6 variables.
Aa factor with levels
-11Ba factor with levels
-11Ca factor with levels
-11Da factor with levels
-11Ea factor with levels
-11ya numeric vector containing the response
Source
Design and Analysis of Experiments with R, by John Lawson, CRC/Chapman Hall
Examples
data(plasma)
Polvoron mixture experiment
Description
Data from the Polvoron mixture experiment in chapter 11 of Design and Analysis of Experiments with R
Usage
data(polvdat)
Format
A data frame with 12 observations on the following 4 variables.
x1a numeric vector
x2a numeric vector
x3a numeric vector
ya numeric vector
Source
Design and Analysis of Experiments with R, by John Lawson, CRC/Chapman Hall
Examples
data(polvdat)
polymerization strength variability study
Description
Data from the polymerization strength variability study in chapter 5 of Design and Analysis of Experiments with R
Usage
data(polymer)
Format
A data frame with 120 observations on the following 5 variables.
lota factor with levels
123456789101112131415161718192021222324252627282930boxa factor with levels
12prepa factor with levels
12testa factor with levels
12strengtha numeric vector
Source
Design and Analysis of Experiments with R, by John Lawson, CRC/Chapman Hall
Examples
data(polymer)
Complete control factor array and noise factor array for connector experiment
Description
Data from the complete control factor array and noise factor array for connector experiment in chapter 12 of Design and Analysis of Experiments with R
Usage
data(prodstd)
Format
A data frame with 16 observations on the following 16 variables.
Aa numeric vector
Ba numeric vector
Ca numeric vector
Da numeric vector
Ea numeric vector
Fa numeric vector
Ga numeric vector
Pofa numeric vector
Source
Design and Analysis of Experiments with R, by John Lawson, CRC/Chapman Hall
Examples
data(prodstd)
Library of substituted hydroxyphenylurea compounds
Description
Data from the Library of substituted hydroxyphenylurea compounds in chapter 10 of Design and Analysis of Experiments with R (compact format)
Usage
data(qsar)
Format
A data frame with 36 observations on the following 4 variables.
Compounda numeric vector
HEa numeric vector
DMza numeric vector
S0Ka numeric vector
Source
Design and Analysis of Experiments with R, by John Lawson, CRC/Chapman Hall
Examples
data(qsar)
generalized RCB golf driving experiment
Description
Data from the generalized RCB golf driving experiment in chapter 4 of Design and Analysis of Experiments with R
Usage
data(rcb)
Format
A data frame with 135 observations on the following 3 variables.
ida factor with levels
123456789teehgta factor with levels
123cdistancea numeric vector
Source
Design and Analysis of Experiments with R, by John Lawson, CRC/Chapman Hall
Examples
data(rcb)
Herbicide degradation experiment
Description
Data from the Herbicide degradation experiment in chapter 9 of Design and Analysis of Experiments with R
Usage
data(residue)
Format
A data frame with 16 observations on the following 3 variables.
soila factor with levels
"C""P"moisturea factor with levels
"L""H"tempa factor with levels
1030X1a numeric vector
X2a numeric vector
X3a numeric vector
X4a numeric vector
X5a numeric vector
Source
Design and Analysis of Experiments with R, by John Lawson, CRC/Chapman Hall
Examples
data(residue)
Rubber Elasticity data
Description
Data from the Rubber Elasticity Study in chapter 5 of Design and Analysis of Experiments with R
Usage
data(rubber)
Format
A data frame with 96 observations on the following 4 variables.
suppliera factor with levels
ABCDbatcha factor with levels
IIIIIIIVsamplea factor with levels
12elasticitya numeric vector
Source
Design and Analysis of Experiments with R, by John Lawson, CRC/Chapman Hall
Examples
data(rubber)
Split-plot experiment on sausage casing with RCB in whole plot
Description
Data from the Split-plot experiment on sausage casing with RCB in whole plot in chapter 7 of Design and Analysis of Experiments with R
Usage
data(sausage)
Format
A data frame with 32 observations on the following 5 variables.
Blocka factor with levels
12Gbatcha factor with levels
1234Aa factor with levels
-11Ba factor with levels
-11Ca factor with levels
-11Da factor with levels
-11ysa numeric vector containing the response
Source
Design and Analysis of Experiments with R, by John Lawson, CRC/Chapman Hall
Examples
data(sausage)
dry mix soup experiment
Description
Data from the dry mix soup experiment in chapter 6 of Design and Analysis of Experiments with R
Usage
data(soup)
Format
A data frame with 16 observations on the following 6 variables.
Aa factor with levels
-11Ba factor with levels
-11Ca factor with levels
-11Da factor with levels
-11Ea factor with levels
-11ya numeric vector
Source
Design and Analysis of Experiments with R, by John Lawson, CRC/Chapman Hall
Examples
data(soup)
dry soup mix variance component study
Description
Data from the dry soup mix variance component study of Chapter 5 in Design and Analysis of Experiments with R
Usage
data(soupmx)
Format
A data frame with 12 observations on the following 2 variables.
batcha factor with levels
1234weighta numeric vector
Source
Design and Analysis of Experiments with R, by John Lawson, CRC/Chapman Hall
Examples
data(soupmx)
Split-plot cookie baking experiment
Description
Data from the Split-plot cookie baking experiment in chapter 8 of Design and Analysis of Experiments with R
Usage
data(splitPdes)
Format
A data frame with 24 observations on the following 5 variables.
shorta factor with levels
10080trayTa factor with levels
RoomTHotbakeTa factor with levels
lowmidhighbatcha factor with levels
12ya numeric vector
Source
Design and Analysis of Experiments with R, by John Lawson, CRC/Chapman Hall
Examples
data(splitPdes)
Standard Order
Description
Makes standard order
Usage
stdord(m)
Arguments
m |
input - vector length |
Value
vector in standard order
Repeated measures study with dairy cow diets
Description
Data from the Repeated measures study with dairy cow diets in chapter 9 of Design and Analysis of Experiments with R (strung out format)
Usage
data(strung)
Format
A data frame with 120 observations on the following 5 variables.
Dieta factor with levels
"Barley""Mixed""Lupins"Cowa factor with levels
12345678910weeka factor with levels
1234proteina numeric vector
Source
Design and Analysis of Experiments with R, by John Lawson, CRC/Chapman Hall
Examples
data(strung)
Strung out control factor array and raw response data for Ina tile experiment
Description
Data from the strung out control factor array and raw response data for Ina tile experiment in chapter 12 of Design and Analysis of Experiments with R
Usage
data(strungtile)
Format
A data frame with 16 observations on the following 16 variables.
Aa numeric vector
Ba numeric vector
Ca numeric vector
Da numeric vector
Ea numeric vector
Fa numeric vector
Ga numeric vector
Ha numeric vector
AHa numeric vector
BHa numeric vector
CHa numeric vector
DHa numeric vector
EHa numeric vector
FHa numeric vector
GHa numeric vector
ya numeric vector
Source
Design and Analysis of Experiments with R, by John Lawson, CRC/Chapman Hall
Examples
data(strungtile)
Sugarbeet data from Chapter 2
Description
Sugarbeet data from chapter 2 of Design and Analysis of Experiments with R
Usage
data(sugarbeet)
Format
A data frame with 18 observations on the following 2 variables.
treata factor with levels
ABCDyielda numeric vector
Source
Design and Analysis of Experiments with R, by John Lawson, CRC/Chapman Hall
Examples
data(sugarbeet)
taste test panel experiment
Description
Data from the taste test panel experiment in Chapter 7 of Design and Analysis of Experiments with R
Usage
data(taste)
Format
A data frame with 24 observations on the following 3 variables.
panelista factor with levels
123456789101112recipea factor with levels
"A""B""C""D"scorea numeric vector
Source
Design and Analysis of Experiments with R, by John Lawson, CRC/Chapman Hall
Examples
data(taste)
Teaching experiment data from Chapter 2
Description
Data from the teaching experiment in chapter 2 of Design and Analysis of Experiments with R
Usage
data(teach)
Format
A data frame with 30 observations on the following 4 variables.
classa numeric vector
methoda factor with levels
123scorea factor with levels
12345counta numeric vector
Source
Design and Analysis of Experiments with R, by John Lawson, CRC/Chapman Hall
Examples
data(teach)
Control factor array and summary statistics for Ina tile experiment
Description
Data from the control factor array and summary statistics for Ina tile experiment in chapter 12 of Design and Analysis of Experiments with R
Usage
data(tile)
Format
A data frame with 8 observations on the following 11 variables.
Aa numeric vector
Ba numeric vector
Ca numeric vector
Da numeric vector
Ea numeric vector
Fa numeric vector
Ga numeric vector
y1a numeric vector
y2a numeric vector
ybara numeric vector
lns2a numeric vector
Source
Design and Analysis of Experiments with R, by John Lawson, CRC/Chapman Hall
Examples
data(tile)
confidence limits for method of moments estimators of variance components
Description
function for getting confidence intervals on variance components estimated by the method of moments
Usage
vci(confl,c1,ms1,nu1,c2,ms2,nu2)
Arguments
confl |
input- confidence level |
c1 |
input - linear combination coefficient of ms1 in the estimated variance component |
ms1 |
input - Anova mean square 1 |
nu1 |
input - Anova degrees of freedom for mean square 1 |
c2 |
input - linear combination coefficient of ms2 in the estimated variance component |
ms2 |
input - Anova mean square 2 |
nu2 |
input - Anova degrees of freedom for mean square 2 |
Value
returned delta, Lower and Upper limits
Author(s)
John Lawson
Vinysl plasticizer formulations experiment data
Description
Data from vinyl plasticiser formulation experiment in chapter 11 of Design and Analysis of Experiments with R
Usage
data(vinyl)
Format
A data frame with 40 observations on the following 7 variables.
WPa numeric vector
x1a numeric vector
x2a numeric vector
x3a numeric vector
z1a numeric vector
z2a numeric vector
ya numeric vector
Source
Design and Analysis of Experiments with R, by John Lawson, CRC/Chapman Hall
Examples
data(vinyl)
Assay of Viral Contamination experiment data from Chapter 3
Description
Data from the Assay of Viral Contamination experiment in chapter 3 of Design and Analysis of Experiments with R
Usage
data(virus)
Format
A data frame with 18 observations on the following 3 variables.
ya numeric vector
Samplea factor with levels
123456Dilutiona factor with levels
345
Source
Design and Analysis of Experiments with R, by John Lawson, CRC/Chapman Hall
Examples
data(virus)
Volt meter experiment data from Chapter 3
Description
Data from the Volt meter experiment in chapter 3 of Design and Analysis of Experiments with R
Usage
data(volt)
Format
A data frame with 16 observations on the following 3 variables.
ya numeric vector
Aa factor containing the levels (22, 32) of factor A
Ba factor containing the levels (0.5, 5.0) of factor B
Ca factor containing the levels (0.5, 5.0) of factor C
Source
Design and Analysis of Experiments with R, by John Lawson, CRC/Chapman Hall
Examples
data(volt)
Web page design experiment data from Chapter 3
Description
Data from the web page design experiment in chapter 3 of Design and Analysis of Experiments with R
Usage
data(web)
Format
A data frame with 36 observations on the following 6 variables.
Aa factor with levels
12Ba factor with levels
12Ca factor with levels
12Da factor with levels
12visitorsa numeric vector
signupa numeric vector
Source
Design and Analysis of Experiments with R, by John Lawson, CRC/Chapman Hall
Examples
data(web)