頁籤選單縮合
題 名 | Regularized Optimization in Statistical Learning: A Bayesian Perspective |
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作 者 | Li, Bin; Goel, Prem K.; | 書刊名 | Statistica Sinica |
卷 期 | 16:2 民95.04 |
頁 次 | 頁411-424 |
分類號 | 319.5 |
關鍵詞 | Bayesian robustness; Bridge regression; Flat-tailed prior; Group LASSO; LASSO; Regularized optimization; |
語 文 | 英文(English) |
英文摘要 | Regularization plays a major role in modern data analysis, whenever non-regularized fitting is likely to lead to over-fitted model. It is known that most regularized optimization problems have Bayesian interpretation in which the prior plays the role of the regularizer. In this paper, we consider the issue of sensitivity of the regularized solution to the prior specification within the Bayesian perspective. We suggest a class of flat-tailed priors for a general likelihood function for robust Bayesian solutions, in the same spirit as the t-distribution being suggested as a flat-tail prior for mormal likelihood. Results are applied to a family of regularized learning methods and group LASSO. In addition, the consistency issue for LASSO is discussed within this framework. |
本系統中英文摘要資訊取自各篇刊載內容。