情感分析中否定处理的特征空间增强

Lutfi Budi Ilmawan, Muladi Muladi, Didik Dwi Prasetya
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引用次数: 0

摘要

影响情绪分析任务表现的一个关键问题是否定。否定处理包括确定否定范围和否定线索。特征空间增强是用来解决否定的一种方法。一些研究者使用否定标志进行特征空间增强,其规则是否定范围包括从显式否定提示到标点符号的所有单词。本研究通过对否定范围添加新的规则来分析分类器在否定处理时的性能。确定否定范围的新规则不再从否定提示到标点符号提取所有单词,而是只考虑或忽略具有特定POS标记的单词。研究结果表明,使用新的否定范围规则有助于提高分类器在情感分析任务中的性能。否定处理方法在正确率、精密度、查全率和得分方面均优于前一种方法。
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Feature Space Augmentation for Negation Handling on Sentiment Analysis
One crucial issue affecting the performance of sentiment analysis tasks is negation. Handling negation involves determining the negation scope and negation cue. Feature space augmentation is one approach used to address negation. Feature space augmentation has been carried out by some previous researchers using a negation flag with the rule that the negation scope includes all words from the explicit negation cue to the punctuation mark. This study aimed to analyze the classifier's performance when negation handling was applied by adding a new rule for the negation scope. The new rule for determining the negation scope no longer took all words from the negation cue to the punctuation mark, but only considered or ignored words with certain POS tags. The results of this study showed that using the new rule for negation scope contributed to improving the performance of the classifier in sentiment analysis tasks. The proposed approach for negation handling was better than the previous approach in terms of accuracy, precision, recall, and f1-score.
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