High-Order Generalized Maximum Entropy Estimator in Kink Regression Model

Payap Tarkhamtham, Woraphon Yamaka, Woraphon Yamaka, Woraphon Yamaka

Authors

  • Support Team

Abstract

Investigation was made on the performance of the high-order Generalized Maximum Entropy (GME) estimators, namely R´enyi and Tsallis GME, in the nonlinear kink regression context with an aim to replace the Shannon entropy measure. Used for performance comparison was the Monte Carlo Simulation to generate the sample size n = 20 and n = 50 with various error distributions. Then, the obtained model was applied to the real data. The results demonstrate that the high-order GME estimators are not much different from the Shannon GME estimator and are not completely superior to the Shannon GME in the simulation study. Nevertheless, according to the MAE criteria, R´enyi and Tsallis GME perform better than the Shannon GME. Thus, it can be concluded that highorder GME estimator can be used as alternative tool in the nonlinear econometric framework.

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Published

2019-02-04

How to Cite

Team, S. (2019). High-Order Generalized Maximum Entropy Estimator in Kink Regression Model: Payap Tarkhamtham, Woraphon Yamaka, Woraphon Yamaka, Woraphon Yamaka. Thai Journal of Mathematics, 185–200. Retrieved from https://thaijmath2.in.cmu.ac.th/index.php/thaijmath/article/view/867