BOOK-CHAPTER

Multi-Label Text Classification with a Robust Label Dependent Representation

Abstract

Automatic text classification is the task of assigning unseen documents to a predefined set of classes or categories. Text Representation for classification have been traditionally approached with tf.idf due to its simplicity and good performance. Multi-label automatic text classification has been traditionally tackled in the literature either by transforming the problem to apply binary techniques or by adapting binary algorithms to work with multiple labels. We present tf.rrfl, a novel text representation for the multi-label classification approach. Our proposal focuses on modifying the data set input to the algorithm, differentiating the input by the label to evaluate. Performance of...

Keywords:
Computer science Multi-label classification Representation (politics) Set (abstract data type) Artificial intelligence Binary classification Task (project management) Binary number Pattern recognition (psychology) Machine learning Data mining Support vector machine Mathematics

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Topics

Text and Document Classification Technologies
Physical Sciences →  Computer Science →  Artificial Intelligence
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