Ranking Attributes Using Learning of Preferences by Means of SVM
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  • 作者:Alejandro Hernández-Arauzo ; Miguel García-Torres ; Antonio Bahamonde
  • 刊名:Lecture Notes in Computer Science
  • 出版年:2007
  • 出版时间:2007
  • 年:2007
  • 卷:4788
  • 期:1
  • 页码:100-109
  • 全文大小:223 KB
  • 刊物类别:Computer Science
  • 刊物主题:Artificial Intelligence and Robotics
    Computer Communication Networks
    Software Engineering
    Data Encryption
    Database Management
    Computation by Abstract Devices
    Algorithm Analysis and Problem Complexity
  • 出版者:Springer Berlin / Heidelberg
  • ISSN:1611-3349
文摘
A relaxed setting for Feature Selection is known as Feature Ranking in Machine Learning. The aim is to establish an order between the attributes that describe the entries of a learning task according to their utility. In this paper, we propose a method to establish these orders using Preference Learning by means of Support Vector Machines (SVM). We include an exhaustive experimental study that investigates the virtues and limitations of the method and discusses, simultaneously, the design options that we have adopted. The conclusion is that our method is very competitive, specially when it searchs for a ranking limiting the number of combinations of attributes explored; this supports that the method presented here could be successfully used in large data sets.

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