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Sentiment Lexicon Generation for an Under-Resourced Language

机译:资源不足语言的情感词汇生成

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摘要

Sentiment analysis and opinion mining are actively explored nowadays. One of the most important resources for the sentiment analysis task is sentiment lexicon. This paper presents our study in building domain-specific sentiment lexicon for Indonesian language. Our main contributions are (I) methods to expand sentiment lexicon using sentiment patterns and (2) a technique to classify the polarity of a word using the sentiment score. Our method is able to generate sentiment lexicon automatically by using a small seed of sentiment words, user reviews, and part-of-speech (POS) tagger. We develop the lexicon for Indonesian language using a set of seed words translated from English sentiment lexicon and expand them using sentiment patterns found in the user reviews. Our results show that the proposed method can generate additional lexicon with sentiment accuracy of 77.7%.
机译:如今,人们正在积极探索情感分析和观点挖掘。用于情感分析任务的最重要资源之一是情感词典。本文介绍了我们在构建印尼语特定领域情感词典方面的研究。我们的主要贡献是(I)使用情感模式扩展情感词典的方法,以及(2)使用情感评分对单词极性进行分类的技术。我们的方法能够通过使用少量的情感词,用户评论和词性(POS)标记器来自动生成情感词典。我们使用一组从英语情感词典翻译的种子词来开发印度尼西亚语词典,并使用用户评论中找到的情感模式来扩展它们。我们的结果表明,该方法可以生成情绪准确度为77.7%的附加词典。

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