为情感分析构建动态词汇

Nicolás Mechulam, Damián Salvia, Aiala Rosá, Mathías Etcheverry
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引用次数: 2

摘要

目前,许多情感分析方法都依赖于情感词汇来识别观点中传递的情感。然而,这些词典大多没有考虑到一个词在不同的预测域中可以表达不同的情感,从而在情感推理中引入了错误。针对这一问题,我们提出了一个基于上下文图的模型,该模型可以通过传播几个种子词的价来构建特定领域的情感词典(DL: Dynamic lexicon)。对于不同的语料库,我们使用相应的深度学习来比较简单的基于规则的情感分类器的结果,与使用一般情感词典获得的结果。对于大多数包含特定领域观点的语料库,深度学习取得了比一般词汇更好的结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Building Dynamic Lexicons for Sentiment Analysis
Nowadays, many approaches for Sentiment Analysis (SA) rely on affective lexicons to identify emotions transmitted in opinions. However, most of these lexicons do not consider that a word can express different sentiments in different predication domains, introducing errors in the sentiment inference. Due to this problem, we present a model based on a context-graph which can be used for building domain specic sentiment lexicons(DL: Dynamic Lexicons) by propagating the valence of a few seed words. For different corpora, we compare the results of a simple rule-based sentiment classier using the corresponding DL, with the results obtained using a general affective lexicon. For most corpora containing specic domain opinions, the DL reaches better results than the general lexicon.
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