Support Vector Machines and Document Classification

نویسنده

  • Saurav Sahay
چکیده

Automatic Text categorization using machine learning methods like Support Vector Machines (SVM) have tremendous potential for effectively organizing electronic resources. Human categorization is very costly and time-consuming, thus limiting its application for large or rapidly changing collections. SVM is a comparatively new technique with a very solid mathematical foundation for solving a variety of ‘learning from examples’ problem and gives high performance in practical applications.

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تاریخ انتشار 2004