Text Categorization and Support Vector Machines
نویسنده
چکیده
Text categorization is used to automatically assign previously unseen documents to a predefined set of categories. This paper gives a short introduction into text categorization (TC), and describes the most important tasks of a text categorization system. It also focuses on Support Vector Machines (SVMs), the most popular machine learning algorithm used for TC, and gives some justification why SVMs are suitable for this task. After the short introduction some interesting text categorization systems are described briefly, and some open problems are presented.
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