客户评审产品中基于学习的方面识别

W. Maharani, D. H. Widyantoro, M. L. Khodra
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引用次数: 6

摘要

方面提取是意见挖掘的重要步骤,用于识别客户评论产品中的方面。大多数现有的工作都是手动或使用启发式方法定义模式集。在本文中,我们提出了基于学习的方法,利用决策树和规则学习来生成基于序列标记的模式集。这些模式将用于识别和提取客户产品评论中的方面,并与意见词汇相结合。我们使用ID3, J48, RandomTree, Part和Prism来生成基于序列标记的标识aspect的模式。实验结果表明,基于决策树和规则学习生成的模式可以产生比基线模型更好的性能。然而,与以前的模式相比,基于学习的方面提取产生的模式数量显著增加。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Learning-based aspect identification in customer review products
Aspect extraction is an important step in opinion mining to identify aspect in customer review products. Most existing works defines the pattern set manually or using heuristic approach. In this paper, we propose learning-based approach using decision tree and rule learning to generate pattern set based on sequence labelling. The patterns will be used to identify and extract aspect in customer product review combined with opinion lexicon. We use ID3, J48, RandomTree, Part and Prism to generate pattern that identifies aspect, based on sequence labelling. Our experiment results based on some generated pattern using Decision Tree and Rule Learning, show that the generated pattern can produced better performance than baseline model. However, there is significant increase in the number of patterns generated from learning-based aspect extraction compared with previous pattern.
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