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Improvement of Adaptive Lasso in Binary Quantile Regression

Published:20 July 2021Publication History

ABSTRACT

In order to avoid the over-fitting of the model, the adaptive LASSO method was used to the variables selection of the binary quantile regression model. Bayesian method is use to construct the Gibbs sampling algorithm and the constraint condition that does not affect the predictive result is used to improve the stability of the sampling value. That the improved model has better parameter estimation efficiency and variable selection effect and classification ability are illustrated in the numerical simulation.

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              cover image ACM Other conferences
              ISEEIE 2021: 2021 International Symposium on Electrical, Electronics and Information Engineering
              February 2021
              644 pages
              ISBN:9781450389839
              DOI:10.1145/3459104

              Copyright © 2021 ACM

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              Publication History

              • Published: 20 July 2021

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