基于分布式关键词向量表示的中文影评情感分析

Chun-Han Chu, Chen-Ann Wang, Yung-Chun Chang, Ying-Wei Wu, Yu-Lun Hsieh, W. Hsu
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引用次数: 15

摘要

在国家语言处理领域,对客户或电影评论进行情感分析的机器学习技术已经被广泛应用。经常尝试。而诸如?支持向量机(SVM)在2000年代非常受欢迎,最近向量表示和人工神经网络的实现百分比稳步上升。本文以台湾某知名论坛的影评为研究对象,提出一种基于词嵌入的影评情感分析方法。在对语料库执行对数似然比(LLR)并选择前10000个最相关的关键词作为不同情感的代表向量后,我们使用这些向量作为测试集的情感分类器。我们获得的结果不仅可以与Naïve贝叶斯和SVM等传统方法相媲美,而且还优于潜在狄利克雷分配,TF-IDF及其变体。它也以相当大的优势超过了最初的最低工资。
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Sentiment analysis on Chinese movie review with distributed keyword vector representation
In the area of national language processing, performing machine learning technique on customer or movie review for sentiment analysis has been? frequently tried. While methods such as? support vector machine (SVM) were much favored in the 2000s, recently there is a steadily rising percentage of implementation with vector representation and artificial neural network. In this article we present an approach to implement word embedding method to conduct sentiment analysis on movie review from a renowned bulletin board system forum in Taiwan. After performing log-likelihood ratio (LLR) on the corpus and selecting the top 10000 most related keywords as representative vectors for different sentiments, we use these vectors as the sentiment classifier for the testing set. We achieved results that are not only comparable to traditional methods like Naïve Bayes and SVM, but also outperform Latent Dirichlet Allocation, TF-IDF and its variant. It also tops the original LLR with a substantial margin.
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