Feature selection for ensembles 论文

1999引用 304
Neural Networks and ApplicationsEvolutionary Algorithms and ApplicationsMetaheuristic Optimization Algorithms Research

详细信息

发表日期
1999-07-18
发表年份
1999

关键词

Neural Networks and ApplicationsEvolutionary Algorithms and ApplicationsMetaheuristic Optimization Algorithms Research

摘要

The traditional motivation behind feature selection algorithms is to find the best subset of features for a task using one particular learning algorithm. Given the recent success of ensembles, however, we investigate the notion of ensemble feature selection in this paper. This task is harder than traditional feature selection in that one not only needs to find features germane to the learning task and learning algorithm, but one also needs to find a set of feature subsets that will promote disagreement among the ensemble's classifiers. In this paper, we present an ensemble feature selection approach that is based on genetic algorithms. Our algorithm shows improved performance over the popular and powerful ensemble approaches of AdaBoost and Bagging and demonstrates the utility of ensemble feature selection. Introduction Feature selection algorithms attempt to find and remove the features which are unhelpful or destructive to learning (Almuallim & Dietterich 1994; Cherkauer & Shavlik 1...