基于Web的短文本分析研究综述

P. C. Rafeeque, S. Sendhilkumar
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引用次数: 26

摘要

随着互联网和博客领域中短文本的爆炸式增长,短文本分类与分析已被确定为近年来蓬勃发展的研究课题。摘要短文本分类由于其稀疏性、噪声词、句法结构和口语化术语的使用而成为一个难题。由于短文本中包含的常用词非常有限,传统的相似度度量方法很难检测出短文本片段之间的内在关系。虽然对文本分类已有一些综述,但对短文本分类和分析还没有系统的综述。本文对现有的短文本分析工作以及相关的问题和挑战进行了综述。用标准的分析方法对这些算法的有效性进行了分析。
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A survey on Short text analysis in Web
With the recent explosive growth of Short text in the Internet and blog-sphere, Short text classification and analysis has been identified as a booming research topic in recent times. Short text classification is a challenge due to its sparse nature, noise words, syntactical structure and colloquial terminologies used. It is usually difficult for traditional similarity measures to detect intrinsic relationship among Short text snippets as they contain very limited common words. Although there are several reviews done on Text classification in general, there are no systematic reviews on Short text classification and analysis. This survey discusses the existing works on Short text analysis and the related issues and challenges. The effectiveness of these algorithms have been analysed by using standard analytical measures.
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