Networks and Natural Language Processing

Radev, Dragomir R. (University of Michigan) | Mihalcea, Rada (University of North Texas)

AI Magazine 

Over the last few years, a number of areas of natural language processing have begun applying graph-based techniques. These include, among others, text summarization, syntactic parsing, word-sense disambiguation, ontology construction, sentiment and subjectivity analysis, and text clustering. In this paper, we present some of the most successful graph-based representations and algorithms used in language processing and try to explain how and why they work.

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