基于Word2Vec-LSTM的影评文本情感分析

Hua Jiang, Chengyu Hu, Feng Jiang
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引用次数: 1

摘要

本文采用基于Word2Vec-LSTM的混合模型对影评情感进行分析。Word2Vec集成文本上下文语义生成文本向量,LSTM提取语义信息对积极情绪和消极情绪进行分类。为了衡量Word2Vec-LSTM的分类能力,构建了Word Index和Hash Trick方法作为基准模型。我们将词索引和哈希技巧与几种主流机器学习模型相结合,得到了基于词索引的分类器和基于哈希技巧的分类器。实验结果表明,Word2Vec-LSTM具有最好的性能。与基于词索引的分类器和基于哈希技巧的分类器相比,准确率分别提高了29.12%和18.84%,这表明Word2Vec-LSTM混合模型对于影评情感分析更为有效。
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Text Sentiment Analysis of Movie Reviews Based on Word2Vec-LSTM
A hybrid model based on Word2Vec-LSTM is utilized to analyze movie review sentiment in this paper. Word2Vec integrates text context semantics to generate text vector, and LSTM extracts semantic information to classify positive and negative emotions. In order to measure the classification capacity of the Word2Vec-LSTM, Word Index and Hash Trick method are constructed as benchmark models. We combine the word index and Hash Trick with several mainstream machine learning models to obtain the Word Index-Based Classifiers and Hash Trick-Based Classifiers. The experimental results show that Word2Vec-LSTM has the best performance. The accuracy is improved by 29.12% and 18.84% compared with Word Index-Based Classifiers and Hash Trick-Based Classifiers respectively, which shows that the Word2Vec-LSTM hybrid model is more effective for the movie review sentiment analysis.
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