GraphRep: Boosting Text Mining, NLP and Information Retrieval with Graphs

M. Vazirgiannis, Fragkiskos D. Malliaros, Giannis Nikolentzos
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引用次数: 13

Abstract

Graphs have been widely used as modeling tools in Natural Language Processing (NLP), Text Mining (TM) and Information Retrieval (IR). Traditionally, the unigram bag-of-words representation is applied; that way, a document is represented as a multiset of its terms, disregarding dependencies between the terms. Although several variants and extensions of this modeling approach have been proposed, the main weakness comes from the underlying term independence assumption; the order of the terms within a document is completely disregarded and any relationship between terms is not taken into account in the final task. To deal with this problem, the research community has explored various representations, and to this direction, graphs constitute a well-developed model for text representation. The goal of this tutorial is to offer a comprehensive presentation of recent methods that rely on graph-based text representations to deal with various tasks in Text Mining, NLP and IR.
GraphRep:用图增强文本挖掘、自然语言处理和信息检索
图作为建模工具被广泛应用于自然语言处理(NLP)、文本挖掘(TM)和信息检索(IR)等领域。传统上,采用一元词袋表示;这样,文档就被表示为术语的多集,而忽略了术语之间的依赖关系。尽管已经提出了这种建模方法的几种变体和扩展,但其主要缺点在于潜在的术语独立性假设;文档中术语的顺序完全被忽略,术语之间的任何关系在最终任务中都不被考虑。为了解决这个问题,研究界已经探索了各种表示方式,在这个方向上,图构成了一个很好的文本表示模型。本教程的目的是全面介绍基于图的文本表示来处理文本挖掘、NLP和IR中的各种任务的最新方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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