Bridge Estimation for Linear Regression Models with Mixing Properties |
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Authors: | Taewook Lee Cheolwoo Park Young Joo Yoon |
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Affiliation: | 1. Department of Statistics, Hankuk University of Foreign Studies, , Yongin, 449‐791 Korea;2. Department of Statistics, University of Georgia, , Athens, GA 30602 USA;3. Department of Business Information Statistics, Daejeon University, , Daejeon, 300‐716 Korea |
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Abstract: | Penalized regression methods have for quite some time been a popular choice for addressing challenges in high dimensional data analysis. Despite their popularity, their application to time series data has been limited. This paper concerns bridge penalized methods in a linear regression time series model. We first prove consistency, sparsity and asymptotic normality of bridge estimators under a general mixing model. Next, as a special case of mixing errors, we consider bridge regression with autoregressive and moving average (ARMA) error models and develop a computational algorithm that can simultaneously select important predictors and the orders of ARMA models. Simulated and real data examples demonstrate the effective performance of the proposed algorithm and the improvement over ordinary bridge regression. |
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Keywords: | ARMA models asymptotic normality bridge regression consistency mixing processes variable selection |
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