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.
Cite
CITATION STYLE
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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