统计与管理学院2016年学术报告第5期

发布者:严继臧发布时间:2016-03-21浏览次数:611

统计与管理学院2016年学术报告第5

 

【主  题】Feature Augmentation via Nonparametrics and Selection (FANS) in High Dimensional Classification

【报告人】 冯阳

美国哥伦比亚大学

【时  间】 2016年3月21日(星期一)10:00-11:00

【地  点】 上海财经大学统计与管理学院大楼1208室

【摘  要】We propose a high dimensional classification method that involves nonparametric feature augmentation. Knowing that marginal density ratios are the most powerful univariate classifiers, we use the ratio estimates to transform the original feature measurements. Subsequently, penalized logistic regression is invoked, taking as input the newly transformed or augmented features. This procedure trains models equipped with local complexity and global simplicity, thereby avoiding the curse of dimensionality while creating a flexible nonlinear decision boundary. The resulting method is called Feature Augmentation via Nonparametrics and Selection (FANS). We motivate FANS by generalizing the Naive Bayes model, writing the log ratio of joint densities as a linear combination of those of marginal densities. It is related to generalized additive models, but has better interpretability and computability.  Risk bounds are developed for FANS.   In numerical analysis, FANS is compared with competing methods, so as to provide a guideline on its best application domain. Real data analysis demonstrates that FANS performs very competitively on benchmark email spam and gene expression data sets. Moreover, FANS is implemented by an extremely fast algorithm through parallel computing.

【邀请人】 黄涛

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