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Text Categorization

Text Categorization is the task of automatically assigning pre-defined categories to documents written in natural languages. Several types of Text Categorization have been studied, each of which deals with different types of documents and categories, such as topic categorization to detect discussed topics (e.g., sports, politics), spam detection, and sentiment classification to determine the sentiment typically in product or movie reviews.

Source: Effective Use of Word Order for Text Categorization with Convolutional Neural Networks

Papers

Showing 221230 of 247 papers

TitleStatusHype
Annotation Artifacts in Natural Language Inference Data0
A Novel Feature Selection and Extraction Technique for Classification0
A Novel Term_Class Relevance Measure for Text Categorization0
An Unsupervised Morphological Criterion for Discriminating Similar Languages0
A Personalized Markov Clustering and Deep Learning Approach for Arabic Text Categorization0
A Practical Perspective on Latent Structured Prediction for Coreference Resolution0
A Proposal of Automatic Error Correction in Text0
Arabic Text Categorization Algorithm using Vector Evaluation Method0
A Semi-supervised Approach for Natural Language Call Routing0
Aspect and Sentiment Aware Abstractive Review Summarization0
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