Emotional element detection and tendency judgment based on mixed model with deep features

Xiao Sun, Chongyuan Sun, F. Ren, Fang Tian, Kunxia Wang
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引用次数: 2

Abstract

With the rapid development of B2C e-commerce and the popularity of online shopping, the Web storages huge number of product reviews comment by customers. Product reviews contain subjective feelings of customers who have used some products, more and more customers browse a large number of online reviews in order to know other customers word-of-mouth of product and service to make an informed choice. Manufacturers also need accurate user feedback from product reviews to improve their goods. However, a large number of reviews made it difficult for manufacturers or potential customers to track the comments and suggestions that customers made. This paper presents a method for extracting emotional elements containing emotional objects and emotional words and their tendencies from product reviews based on mixed model. First we constructed conditional random fields (CRFs) to extract emotional elements, lead-in semantic and word meaning as features to improve the robustness of feature template and used rules for hierarchical filtering errors. Then we constructed support vector machine (SVM) to classify the emotional tendency of the fine-grained elements to achieve key information from product reviews. Deep semantic information imported based on neural network (NN) to improve the traditional bag of word model. Experimental results show that the proposed model with deep features efficiently improved the F-Measure.
基于深层特征混合模型的情感元素检测与倾向判断
随着B2C电子商务的快速发展和网上购物的普及,网络存储了大量的顾客对产品的评论。产品评论包含了使用过某些产品的客户的主观感受,越来越多的客户通过浏览大量的在线评论来了解其他客户对产品和服务的口碑,从而做出明智的选择。制造商还需要从产品评论中获得准确的用户反馈,以改进产品。然而,大量的评论使得制造商或潜在客户很难跟踪客户提出的评论和建议。提出了一种基于混合模型的从产品评论中提取包含情感对象和情感词及其倾向的情感元素的方法。首先构建条件随机场(CRFs)提取情感元素、引入语义和词义作为特征,提高特征模板的鲁棒性,并对分层过滤错误使用规则。然后构建支持向量机(SVM)对细粒度元素的情感倾向进行分类,从产品评论中获取关键信息。基于神经网络(NN)引入深度语义信息,对传统的词包模型进行改进。实验结果表明,基于深度特征的模型有效地改进了F-Measure。
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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