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en:publi:others_art [2016/11/14 15:18] tdenoeuxen:publi:others_art [2022/07/07 12:35] (current) tdenoeux
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-====== Statistics and classification ====== +====== Statistics, econometrics and classification ====== 
-   - S. Sriboonchitta, J. Liu, A. Wiboonpongse and T. Denoeux. A double-copula stochastic frontier model with dependent error components and correction for sample selection. International Journal of Approximate Reasoning, Volume 80, January 2017, Pages 174-184. {{:en:publi:copula-based-model_td.pdf|pdf}}+   - E. Rammaso, T. Denoeux and G. Chevallier. Clustering acoustic emission data streams with sequentially appearing clusters using mixture models. Mechanical Systems and Signal Processing, Vol. 181, 109504, 2022. {{ :en:publi:gmm_sequential_elsevier.pdf |pdf}} 
 +   - J. Liu, S. Sriboonchitta, A. Wiboonpongse and T. Denoeux. A trivariate Gaussian copula stochastic frontier model with sample selection. International Journal of Approximate Reasoning, Volume 137, Pages 181-198, 2021. {{ :en:publi:multivariate_gaussian_copula_sfm_final.pdf |pdf}} 
 +   - S. Sriboonchitta, J. Liu, A. Wiboonpongse and T. Denoeux. A double-copula stochastic frontier model with dependent error components and correction for sample selection. International Journal of Approximate Reasoning, Volume 80, Pages 174-184, 2017. {{:en:publi:copula-based-model_td.pdf|pdf}}
   - A. Wiboonpongse, J. Liu, S. Sriboonchitta and T. Denoeux. Modeling dependence between error components of the stochastic frontier model using copula: Application to Intercrop Coffee Production in Northern Thailand. International Journal of Approximate Reasoning, Vol. 65, Pages 34-44, 2015. {{:en:publi:stochastic_frontier2014_revised.pdf|pdf}}   - A. Wiboonpongse, J. Liu, S. Sriboonchitta and T. Denoeux. Modeling dependence between error components of the stochastic frontier model using copula: Application to Intercrop Coffee Production in Northern Thailand. International Journal of Approximate Reasoning, Vol. 65, Pages 34-44, 2015. {{:en:publi:stochastic_frontier2014_revised.pdf|pdf}}
 +  - E. Côme, L. Oukhellou, T. Denoeux and P. Aknin. Fault diagnosis of a railway device using semi-supervised independent factor analysis with mixing constraints. Pattern Analysis and Applications, Vol. 15, Number 3, pages 313-326, 2012. {{en:publi:paa2010last.pdf|pdf}}
   - Z. Younes, F. Abdallah, T. Denoeux and H. Snoussi. A dependent multi-label classification method derived from the k-nearest neighbor rule. EURASIP Journal on Advances in Signal Processing, vol. 2011, Article ID 645964, 14 pages, 2011. doi:10.1155/2011/645964. {{en:publi:dmlknnv3.pdf|pdf}}   - Z. Younes, F. Abdallah, T. Denoeux and H. Snoussi. A dependent multi-label classification method derived from the k-nearest neighbor rule. EURASIP Journal on Advances in Signal Processing, vol. 2011, Article ID 645964, 14 pages, 2011. doi:10.1155/2011/645964. {{en:publi:dmlknnv3.pdf|pdf}}
   - T. Denoeux and G. Govaert. Un algorithme de classification automatique non paramétrique. Comptes-Rendus de l'Académie des Sciences , t. 324, Série I, p. 673-678, 1997. {{en:publi:cras97.pdf|pdf}}   - T. Denoeux and G. Govaert. Un algorithme de classification automatique non paramétrique. Comptes-Rendus de l'Académie des Sciences , t. 324, Série I, p. 673-678, 1997. {{en:publi:cras97.pdf|pdf}}

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