Automatic product feature extraction from online product reviews using maximum entropy with lexical and syntactic features

G. Somprasertsri, P. Lalitrojwong
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引用次数: 44

Abstract

The task of product feature extraction is to find product features that customers refer to their topic reviews. It would be useful to characterize the opinions about the products. We propose an approach for product feature extraction by combining lexical and syntactic features with a maximum entropy model. For the underlying principle of maximum entropy, it prefers the uniform distributions if there is no external knowledge. Using a maximum entropy approach, firstly we extract the learning features from the annotated corpus, secondly we train the maximum entropy model, thirdly we use trained model to extract product features, and finally we apply a natural language processing technique in postprocessing step to discover the remaining product features. Our experimental results show that this approach is suitable for automatic product feature extraction.
基于词法和句法特征的最大熵在线产品评论特征自动提取
产品特征提取的任务是找到客户在主题评论中引用的产品特征。描述一下对产品的看法是很有用的。我们提出了一种将词法和句法特征与最大熵模型相结合的产品特征提取方法。对于最大熵的基本原理,如果没有外部知识,它倾向于均匀分布。首先利用最大熵方法从标注的语料库中提取学习特征,然后训练最大熵模型,然后利用训练好的模型提取产品特征,最后在后处理步骤中应用自然语言处理技术发现剩余的产品特征。实验结果表明,该方法适用于产品特征的自动提取。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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