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Towards Domain-Independent Opinion Target Extraction

机译:走向独立于域的意见目标提取

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In this paper, we investigate the problem of domain-independent opinion target extraction. The only lexical resource used is domain-independent (general) sentiment dictionary. We begin from investigating syntactic descriptions (rules) using dependency parsing jointly with sentiment dictionary. We conclude that such a solution is not sufficient for opinion target extraction due to low precision. To overcome this difficulty, we propose a well-known supervised machine learning method as the second step, after applying syntactic rules. We find that supervised model without lexical features outperforms by large margin a comparable one with lexical features. The results appear promising and contribute to domain-independent opinion target extraction. All experiments were carried out on a publicly available Polish dependency treebank with manually verified opinion and sentiment annotations, as well as opinion target information.
机译:在本文中,我们研究了独立于领域的意见目标提取问题。唯一使用的词汇资源是与领域无关的(一般)情感词典。我们从研究依赖关系分析和情感词典一起使用语法描述(规则)开始。我们得出结论,由于精度低,这样的解决方案不足以用于意见目标提取。为了克服这个困难,在应用语法规则之后,我们提出了一种众所周知的有监督的机器学习方法作为第二步。我们发现,没有词法特征的监督模型在很大程度上优于具有词法特征的监督模型。结果似乎很有希望,并有助于独立于领域的意见目标的提取。所有实验都是在波兰公开的依赖树库上进行的,这些树库具有手动验证的观点和情感注释以及观点目标信息。

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