基于双向长短期记忆的阿拉伯语情感分析

Osama Elsamadony, A. Keshk, Amira Abdelatey
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引用次数: 0

摘要

由于社交网络的超级增长,数字时代产生的数据量是巨大的。情感分析(SA)旨在从文本中提取意见并确定极性(积极,消极或中性)。SA被广泛用于指代英语。本研究的主题是阿拉伯语中的SA。Word2Vec与本文使用的双向长短时记忆(Bidirectional Long-Short - Time Memory, BLSTM)存在融合。首先,利用单词表示模型将评论中的单词转移到相应的向量中。其次,将句子中的单词序列作为输入传递给BLSTM。BLSTM不仅捕获了远程信息,解决了梯度衰减问题,而且更好地表示了词序列的未来语义。极性是使用Word2Vec表示模型计算的,该模型依赖于含义和上下文。提出了一种基于blstm的深度学习体系结构。结果表明,BLSTM模型体系结构优于ML、CNN和LSTM体系结构,最大准确率为94.88%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Arabic Language Sentiment Analysis using Bidirectional Long Short Term Memory
The amount of data generated in the digital era is huge since the super growth of social networks. Sentiment analysis (SA) seeks to extract opinions from a text and determine the polarity (positive, negative, or neutral). SA is widely used to refer to English. The topic of this study is SA in the Arabic language. There is an amalgamation between Word2Vec and Bidirectional Long-Short Time Memory (BLSTM) used in this paper. Firstly, words in reviews are transferred into their corresponding vectors with word representation models. Secondly, the sequence of words in the sentences passes as input to BLSTM. BLSTM not only captures long-range information and solves the gradient attenuation problem, but it also better represents the future semantics of the word sequence. The polarity was calculated using Word2Vec representation models, which rely on meaning and context. A BLSTM-based deep learning (DL) architecture is proposed. The result shows that the BLSTM Model Architecture surpasses ML, CNN, and LSTM Architectures with a maximum accuracy of 94.88 percent.
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