To cite the package meteorits in a publication please use the following reference. To cite the corresponding paper for a specific package from meteorits (e.g NMoE, SNMoE, tMoE, StMoE, etc), please choose the reference(s) from the list provided below.
Chamroukhi F, Lecocq F, Bartcus M (2019). meteorits: Mixtures-of-Experts Modeling for Complex and Non-Normal Distributions ('MEteorits'). R package version 0.1.1, https://github.com/fchamroukhi/MEteorits.
Huynh B, Chamroukhi F (2019). “Estimation and Feature Selection in Mixtures of Generalized Linear Experts Models.” Journal de la Société Française de Statistique. https://chamroukhi.com/papers/Chamroukhi_Huynh_jsfds-published.pdf.
Chamroukhi F, Huynh B (2019). “Regularized Maximum Likelihood Estimation and Feature Selection in Mixtures-of-Experts Models.” Journal de la Société Française de Statistique, 160(1), 57–85.
Nguyen H, Chamroukhi F (2018). “Practical and theoretical aspects of mixture-of-experts modeling: An overview.” Wiley Interdisciplinary Reviews: Data Mining and Knowledge Discovery, e1246–n/a. doi:10.1002/widm.1246, https://chamroukhi.com/papers/Nguyen-Chamroukhi-MoE-DMKD-2018.
Chamroukhi F (2017). “Skew t mixture of experts.” Neurocomputing - Elsevier, 266, 390–408. https://chamroukhi.com/papers/STMoE.pdf.
Chamroukhi F (2016). “Robust mixture of experts modeling using the t-distribution.” Neural Networks - Elsevier, 79, 20–36. https://chamroukhi.com/papers/TMoE.pdf.
Chamroukhi F (2016). “Skew-Normal Mixture of Experts.” In The International Joint Conference on Neural Networks (IJCNN). https://chamroukhi.com/papers/Chamroukhi-SNMoE-IJCNN2016.pdf.
Chamroukhi F (2015). Statistical learning of latent data models for complex data analysis. Habilitation Thesis (HDR), Université de Toulon. https://chamroukhi.com/Dossier/FChamroukhi-Habilitation.pdf.
Chamroukhi F (2010). Hidden process regression for curve modeling, classification and tracking. Ph.D. Thesis, Université de Technologie de Compiègne. https://chamroukhi.com/papers/FChamroukhi-Thesis.pdf.
Chamroukhi F, Samé A, Govaert G, Aknin P (2009). “Time series modeling by a regression approach based on a latent process.” Neural Networks Elsevier Science Ltd., 22(5-6), 593–602.
Corresponding BibTeX entries:
@Manual{, title = {meteorits: Mixtures-of-Experts Modeling for Complex and Non-Normal Distributions ('MEteorits')}, author = {F. Chamroukhi and F. Lecocq and M. Bartcus}, year = {2019}, note = {R package version 0.1.1}, url = {https://github.com/fchamroukhi/MEteorits}, }
@Article{, author = {B-T. Huynh and F. Chamroukhi}, journal = {Journal de la Soci\'{e}t\'{e} Fran\c{c}aise de Statistique}, title = {Estimation and Feature Selection in Mixtures of Generalized Linear Experts Models}, year = {2019}, url = {https://chamroukhi.com/papers/Chamroukhi_Huynh_jsfds-published.pdf}, }
@Article{, title = {Regularized Maximum Likelihood Estimation and Feature Selection in Mixtures-of-Experts Models}, author = {F. Chamroukhi and Bao T. Huynh}, journal = {Journal de la Soci\'{e}t\'{e} Fran\c{c}aise de Statistique}, volume = {160}, number = {1}, pages = {57--85}, year = {2019}, }
@Article{, title = {Practical and theoretical aspects of mixture-of-experts modeling: An overview}, author = {Hien D. Nguyen and F. Chamroukhi}, journal = {Wiley Interdisciplinary Reviews: Data Mining and Knowledge Discovery}, publisher = {Wiley Periodicals, Inc}, year = {2018}, pages = {e1246--n/a}, doi = {10.1002/widm.1246}, url = {https://chamroukhi.com/papers/Nguyen-Chamroukhi-MoE-DMKD-2018}, }
@Article{, title = {Skew t mixture of experts}, author = {F. Chamroukhi}, journal = {Neurocomputing - Elsevier}, year = {2017}, volume = {266}, pages = {390--408}, url = {https://chamroukhi.com/papers/STMoE.pdf}, }
@Article{, title = {Robust mixture of experts modeling using the t-distribution}, author = {F. Chamroukhi}, journal = {Neural Networks - Elsevier}, year = {2016}, volume = {79}, pages = {20--36}, url = {https://chamroukhi.com/papers/TMoE.pdf}, }
@InProceedings{, title = {Skew-Normal Mixture of Experts}, author = {F. Chamroukhi}, booktitle = {The International Joint Conference on Neural Networks (IJCNN)}, year = {2016}, url = {https://chamroukhi.com/papers/Chamroukhi-SNMoE-IJCNN2016.pdf}, }
@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)}, url = {https://chamroukhi.com/Dossier/FChamroukhi-Habilitation.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 = {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 Elsevier Science Ltd.}, year = {2009}, volume = {22}, number = {5-6}, pages = {593--602}, }