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Learning General Connotation of Words using Graph-based Algorithms

机译:使用基于图的算法学习单词的一般含义

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In this paper, we introduce a connotation lexicon, a new type of lexicon that lists words with connotative polarity, i.e., words with positive connotation (e.g., award, promotion) and words with negative connotation (e.g., cancer, war). Connotation lexicons differ from much studied sentiment lexicons: the latter concerns words that express sentiment, while the former concerns words that evoke or associate with a specific polarity of sentiment. Understanding the connotation of words would seem to require common sense and world knowledge. However, we demonstrate that much of the connotative polarity of words can be inferred from natural language text in a nearly unsu-pervised manner. The key linguistic insight behind our approach is selectional preference of connotative predicates. We present graph-based algorithms using PageRank and HITS that collectively learn connotation lexicon together with connotative predicates. Our empirical study demonstrates that the resulting connotation lexicon is of great value for sentiment analysis complementing existing sentiment lexicons.
机译:在本文中,我们介绍了一种内涵词典,这是一种新型的词典,它列出了具有内涵极性的单词,即具有正面含义的单词(例如,奖励,晋升)和具有负面含义的单词(例如,癌症,战争)。内涵词典与经过大量研究的情感词典不同:后者与表达情感的单词有关,而前者与唤起或与特定情感极性相关的单词有关。理解单词的含义似乎需要常识和世界知识。但是,我们证明了单词的许多含义极性可以从自然语言文本中以几乎不受监督的方式推断出来。我们的方法背后的主要语言学见识是内涵谓词的选择偏好。我们介绍使用PageRank和HITS的基于图的算法,这些算法可共同学习内涵词典和内涵谓词。我们的经验研究表明,所产生的内涵词典对于情感分析补充现有的情感词典具有重要的价值。

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