Semiparametric estimation and panel data clustering analysis based on D-vine and c-vine

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Abstract

This paper proposed a panel data clustering model based on D-vine and C-vine and supported a semiparametric estimation for parameters. These models include a two-step inference function for margins, two-step semiparameter estimation, and stepwise semiparametric estimation. In similarity measurement, similarity coefficients are constructed by a multivariate Hierarchical Nested Archimedean Copula (HNAC) model and compound PCC models, which are HNAC and D-vine compound model and HNAC and C-vine compound model. Estimation solutions and models evaluation are given for these models. In the case study, the clustering results of HNAC and D-vine compound model and HNAC and C-vine compound model are given, and the effect of different copula families on clustering results is also discussed. The result shows the models are effective and useful.

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Li, H., Xie, Y., Yang, J., & Wang, D. (2018). Semiparametric estimation and panel data clustering analysis based on D-vine and c-vine. Mathematical Problems in Engineering, 2018. https://doi.org/10.1155/2018/5840296

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