Nlp-driven Document Representations for Text Categorization: Empirical Selection of Nlp-driven Document Representations for Text Categorization - Ozgur Yilmazel - Livros - VDM Verlag Dr. Müller - 9783836488419 - 17 de abril de 2008
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Nlp-driven Document Representations for Text Categorization: Empirical Selection of Nlp-driven Document Representations for Text Categorization

Ozgur Yilmazel

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Nlp-driven Document Representations for Text Categorization: Empirical Selection of Nlp-driven Document Representations for Text Categorization

Text Categorization is the task of assigning predefined labels to textual documents. Current research has been focused on using word based representations called bag-of-words (BOW) with strong statistical learners. Few studies have explored the use of more complex Natural Language Processing (NLP) driven representations based on phrases, proper names and word senses. None of these had definitive results on these features? benefits for text categorization problems. This book studies the use of NLP-driven document representations captured at many different levels of language processing, and shows that NLP-driven document representations improve text categorization. A methodology, called? Empirical Selection Methodology for NLP-driven document representations? is presented. Methodology helps to select document representations for each category in the categorization problem. The methodology should help Text Categorization researchers as well as researchers working on other classification problems, because it is generalizable, and can produce better instance representations for different learning problems.

Mídia Livros     Paperback Book   (Livro de capa flexível e brochura)
Lançado 17 de abril de 2008
ISBN13 9783836488419
Editoras VDM Verlag Dr. Müller
Páginas 80
Dimensões 117 g
Idioma English  

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