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Research on Product Attribute Extraction and Classification Method for Online Review

机译:在线评论的产品属性提取与分类方法研究

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摘要

With the rapid development of e-commerce, a wide variety of product reviews have appeared on the internet. These reviews not only provide consumers with a reference, but also help manufacturers make reasonable marketing decisions. In online reviews, customers usually give opinions on multiple attributes of products, therefore, the analysis of product attributes is a crucial issue in product review analysis. This paper studies in depth the extraction and classification of product attribute words from the context. Aiming at the colloquial speech in the online review and the incompleteness of the existing dictionary-based word segmentation methods, this paper uses machine learning method to identify product attribute words. By introducing the word internal tag method to identify the segmented out-of-vocabulary attribute words, and add it to the user's dictionary, correcting the word segmentation results. In addition, a word-level text classification method based on distributed word representation is proposed, and the semantic and syntactic features of the word vectors are used to classify the product attribute words.
机译:随着电子商务的飞速发展,互联网上出现了各种各样的产品评论。这些评论不仅可以为消费者提供参考,还可以帮助制造商做出合理的营销决策。在在线评论中,客户通常会对产品的多个属性给出意见,因此,对产品属性的分析是产品评论分析中的关键问题。本文深入研究了上下文中产品属性词的提取和分类。针对在线评论中的口语演讲以及现有的基于字典的分词方法的不完善,本文采用机器学习方法来识别产品属性词。通过引入单词内部标记方法来识别分割出的词汇外属性单词,并将其添加到用户词典中,以纠正单词分割结果。此外,提出了一种基于分布式词表示的词级文本分类方法,并利用词向量的语义和句法特征对产品属性词进行分类。

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