A Bayesian Approach to Joint Feature Selection and Classifier Design.pdf

A Bayesian Approach to Joint Feature Selection and Classifier Design.pdf

  1. 1、本文档共16页,可阅读全部内容。
  2. 2、原创力文档(book118)网站文档一经付费(服务费),不意味着购买了该文档的版权,仅供个人/单位学习、研究之用,不得用于商业用途,未经授权,严禁复制、发行、汇编、翻译或者网络传播等,侵权必究。
  3. 3、本站所有内容均由合作方或网友上传,本站不对文档的完整性、权威性及其观点立场正确性做任何保证或承诺!文档内容仅供研究参考,付费前请自行鉴别。如您付费,意味着您自己接受本站规则且自行承担风险,本站不退款、不进行额外附加服务;查看《如何避免下载的几个坑》。如果您已付费下载过本站文档,您可以点击 这里二次下载
  4. 4、如文档侵犯商业秘密、侵犯著作权、侵犯人身权等,请点击“版权申诉”(推荐),也可以打举报电话:400-050-0827(电话支持时间:9:00-18:30)。
查看更多
A Bayesian Approach to Joint Feature Selection and Classifier Design

A Bayesian Approach to Joint Feature Selection and Classifier Design Balaji Krishnapuram,1,∗ Alexander J. Hartemink,2 Lawrence Carin,1 Fellow, ´ 3 IEEE , and Mario A. T. Figueiredo, Senior Member, IEEE Abstract This paper adopts a Bayesian approach to simultaneously learn both an optimal nonlinear classifier and a subset of predictor variables (or features) that are most relevant to the classification task. The approach uses heavy-tailed priors to promote sparsity in the utilization of both basis functions and features; these priors act as regularizers for the likelihood function that rewards good classification on the training data. We derive an expectation-maximization (EM) algorithm to efficiently compute a maximum a posteriori (MAP) point estimate of the various parameters. The algorithm is an extension of recent state-of-the- art sparse Bayesian classifiers, which in turn can be seen as Bayesian counterparts of support vector machines. Experimental comparisons using kernel classifiers demonstrate both parsimonious feature selection and excellent classification accuracy on a range of synthetic and benchmark datasets. Index Terms Statistical pattern recognition, statistical learning, feature selection, sparsity, support vector machines, relevance vector machines, sparse probit regression, automatic relevance determination, EM algorithm. I. INTRODUCTION A. Motivation In binary supervised learning problems, the goal is to learn how to distinguish between examples from

文档评论(0)

yaobanwd + 关注
实名认证
内容提供者

该用户很懒,什么也没介绍

1亿VIP精品文档

相关文档