To cite the toolbox samurais in a publication please use the following reference. To cite the corresponding paper for a specific package from samurais (e.g RHLP, HMMR, PWR, etc), please choose the reference(s) from the list provided below.
Chamroukhi F, Bartcus M, Lecocq F (2019). samurais: Statistical Models for the Unsupervised segmentatIon of Time-Series (SaMUraiS). R package version 0.1.0, https://github.com/fchamroukhi/SaMUraiS.
Chamroukhi F, Nguyen H (2019). “Model-Based Clustering and Classification of Functional Data.” Wiley Interdisciplinary Reviews: Data Mining and Knowledge Discovery. doi:10.1002/widm.1298, https://chamroukhi.com/papers/MBCC-FDA.pdf.
Chamroukhi F (2015). Statistical learning of latent data models for complex data analysis. Habilitation Thesis (HDR), Universit'e de Toulon.
Chamroukhi F, Trabelsi D, Mohammed S, Oukhellou L, Amirat Y (2013). “Joint segmentation of multivariate time series with hidden process regression for human activity recognition.” Neurocomputing, 120, 633–644. https://chamroukhi.com/papers/chamroukhi_et_al_neucomp2013b.pdf.
Trabelsi D, Mohammed S, Chamroukhi F, Oukhellou L, Amirat Y (2013). “An unsupervised approach for automatic activity recognition based on Hidden Markov Model Regression.” IEEE Transactions on Automation Science and Engineering, 3(10), 829–335. https://chamroukhi.com/papers/Chamroukhi-MHMMR-IeeeTase.pdf.
Chamroukhi F (2010). Hidden process regression for curve modeling, classification and tracking. Ph.D. Thesis, Universit'e de Technologie de Compi'egne. https://chamroukhi.com/papers/FChamroukhi-Thesis.pdf.
Chamroukhi F, Samé A, Govaert G, Aknin P (2010). “A hidden process regression model for functional data description. Application to curve discrimination.” Neurocomputing, 73(7-9), 1210–1221. https://chamroukhi.com/papers/chamroukhi_neucomp_2010.pdf.
Chamroukhi F, Samé A, Govaert G, Aknin P (2009). “Time series modeling by a regression approach based on a latent process.” Neural Networks, 22(5-6), 593–602. https://chamroukhi.com/papers/Chamroukhi_Neural_Networks_2009.pdf.
Corresponding BibTeX entries:
@Manual{,
title = {samurais: Statistical Models for the Unsupervised
segmentatIon of Time-Series (SaMUraiS)},
author = {F. Chamroukhi and M. Bartcus and F. Lecocq},
year = {2019},
note = {R package version 0.1.0},
url = {https://github.com/fchamroukhi/SaMUraiS},
}
@Article{,
title = {Model-Based Clustering and Classification of Functional
Data},
author = {F. Chamroukhi and Hien D. Nguyen},
journal = {Wiley Interdisciplinary Reviews: Data Mining and
Knowledge Discovery},
year = {2019},
url = {https://chamroukhi.com/papers/MBCC-FDA.pdf},
doi = {10.1002/widm.1298},
}
@PhdThesis{,
title = {Statistical learning of latent data models for complex
data analysis},
author = {F. Chamroukhi},
school = {Universit'{e} de Toulon},
year = {2015},
type = {{Habilitation Thesis (HDR)}},
}
@Article{,
title = {Joint segmentation of multivariate time series with hidden
process regression for human activity recognition},
author = {F. Chamroukhi and D. Trabelsi and S. Mohammed and L.
Oukhellou and Y. Amirat},
journal = {Neurocomputing},
year = {2013},
volume = {120},
publisher = {Elsevier},
pages = {633--644},
url =
{https://chamroukhi.com/papers/chamroukhi_et_al_neucomp2013b.pdf},
}
@Article{,
title = {An unsupervised approach for automatic activity
recognition based on Hidden Markov Model Regression},
author = {D. Trabelsi and S. Mohammed and F. Chamroukhi and L.
Oukhellou and Y. Amirat},
journal = {IEEE Transactions on Automation Science and
Engineering},
year = {2013},
volume = {3},
number = {10},
pages = {829--335},
url =
{https://chamroukhi.com/papers/Chamroukhi-MHMMR-IeeeTase.pdf},
}
@PhdThesis{,
title = {Hidden process regression for curve modeling,
classification and tracking},
author = {F. Chamroukhi},
school = {Universit'{e} de Technologie de Compi`{e}gne},
year = {2010},
type = {Ph.D. Thesis},
url = {https://chamroukhi.com/papers/FChamroukhi-Thesis.pdf},
}
@Article{,
title = {A hidden process regression model for functional data
description. Application to curve discrimination},
author = {F. Chamroukhi and A. Sam\'{e} and G. Govaert and P.
Aknin},
journal = {Neurocomputing},
year = {2010},
volume = {73},
number = {7-9},
pages = {1210--1221},
url = {https://chamroukhi.com/papers/chamroukhi_neucomp_2010.pdf},
}
@Article{,
title = {Time series modeling by a regression approach based on a
latent process},
author = {F. Chamroukhi and A. Sam\'{e} and G. Govaert and P.
Aknin},
journal = {Neural Networks},
publisher = {Elsevier Science Ltd.},
year = {2009},
volume = {22},
number = {5-6},
pages = {593--602},
url =
{https://chamroukhi.com/papers/Chamroukhi_Neural_Networks_2009.pdf},
}