The LASSO Method for Bilinear Time Series Models |
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Authors: | Lixiang Tan |
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Affiliation: | Department of Mathematics, Nanjing University, Nanjing, P.R. China |
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Abstract: | In this article we propose a method called GLLS for the fitting of bilinear time series models. The GLLS procedure is the combination of the LASSO method, the generalized cross-validation method, the least angle regression method, and the stepwise regression method. Compared with the traditional methods such as the repeated residual method and the genetic algorithm, GLLS has the advantage of shrinking the coefficients of the models and saving the computational time. The Monte Carlo simulation studies and a real data example are reported to assess the performance of the proposed GLLS method. |
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Keywords: | Bilinear time series model GLLS LASSO The generalized cross-validation method The least angle regression The stepwise regression. |
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