基于LSTM-CNN和LDA主题模型的实体书店消费者在线评论情感分析

Yan Wang, Xuteng Wang, Xiaoyu Chang
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引用次数: 1

摘要

实体书店是文化潮流的引领者、国民阅读的载体和公共文化服务的提供者,是城市文化软实力的体现。互联网电子商务平台的广泛使用和人们阅读习惯的改变给实体书店带来了很大的冲击,导致实体书店整体盈利能力不佳。为了实现实体书店的可持续发展,我们对消费者产生的在线评论进行了挖掘和分析。本文提出了一种基于LSTM-CNN(混合长短期记忆-卷积神经网络)和LDA(潜在狄利克雷分配)主题模型的情感分析方法。首先使用混合LSTM-CNN模型对评论进行分类,然后使用LDA主题模型提取正面和负面评论的特征。结果表明,混合LSTM-CNN模型在情感分类方面的性能优于经典LSTM和CNN。LDA模型挖掘出消费者对实体书店的产品、语境和氛围持积极态度,对价格和服务持消极态度。该方法从情感分类和主题挖掘两个方面对实体书店消费者生成的在线评论进行研究,帮助实体书店经营者及时了解消费者的反馈。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Sentiment Analysis of Consumer-Generated Online Reviews of Physical Bookstores Using Hybrid LSTM-CNN and LDA Topic Model
Physical bookstore is the leader of cultural trend, the carrier of national reading and the provider of public cultural services, which embodies the cultural soft power of a city. The widely use of Internet e-commerce platform and the change of people's reading habits have brought great impact on physical bookstores, resulting in poor overall profitability of physical bookstores. In order to realize the sustainable development of physical bookstores, we mine and analyze consumer-generated online reviews. In this paper, a method of sentiment analysis based on Hybrid LSTM-CNN (Hybrid Long Short-Term Memory-Convolutional Neural Network) and LDA (Latent Dirichlet Allocation) topic model is proposed. Firstly, the Hybrid LSTM-CNN model is used to classify reviews, and then LDA topic model is used to extract features of positive and negative reviews. The results show that Hybrid LSTM-CNN model has better performance than the classic LSTM and CNN in sentiment classification. The LDA model mines that consumers have the positive attitude towards the products, context and ambiance of physical bookstores, and the negative attitude towards price and service. This method studies consumer-generated online reviews in physical bookstores from two aspects: sentiment classification and topic mining, which can help physical bookstore operators to know consumer feedback in time.
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