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en:publi:others_art [2021/09/20 16:30] tdenoeuxen:publi:others_art [2022/07/07 12:35] (current) tdenoeux
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 ====== Statistics, econometrics and classification ====== ====== Statistics, econometrics and classification ======
 +   - 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}}    - 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}}    - 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}}

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