دانلود Efficient Feature Selection via Analysis of Relevance and Redundancy

ترجمه مقاله Efficient Feature Selection via Analysis of Relevance and Redundancy
قیمت : 1,270,000 ریال
شناسه محصول : 2008236
نویسنده/ناشر/نام مجله : Journal of Machine Learning Research
سال انتشار: 2004
تعداد صفحات انگليسي : 20
نوع فایل های ضمیمه : Pdf+Word
حجم فایل : 159 Kb
کلمه عبور همه فایلها : www.daneshgahi.com
عنوان انگليسي : Efficient Feature Selection via Analysis of Relevance and Redundancy

چکیده

Abstract

Feature selection is applied to reduce the number of features in many applications where data has hundreds or thousands of features. Existing feature selection methods mainly focus on finding relevant features. In this paper, we show that feature relevance alone is insufficient for efficient feature selection of high-dimensional data. We define feature redundancy and propose to perform explicit redundancy analysis in feature selection. A new framework is introduced that decouples relevance analysis and redundancy analysis. We develop a correlation-based method for relevance and redundancy analysis, and conduct an empirical study of its efficiency and effectiveness comparing with representative methods.

Keywords: supervised learning feature selection relevance

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