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Performance Analysis of Different Neural Networks for Sentiment Analysis on IMDb Movie Reviews

机译:IMDB电影评论不同神经网络的性能分析

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With the huge expansion of text data sentiment analysis is playing a crucial role in analyzing the user’s perspective about a particular product, company or any other physical or virtual entity. Sentiment analysis helps us to analyze user review about an entity and then drawing out a conclusion based on the sentiments it extracted from the reviews. Convolution Neural Network (CNN) and Long-Short-Term Memory Network (LSTM) are two well-known deep neural networks used for sentiment analysis. In this paper, we have compared between CNN, LSTM and LSTM-CNN architectures for sentiment classification on the IMDb movie reviews in order to find the best-suited architecture for the dataset. Experimental results have shown that CNN has achieved an F-Score of 91% which has outperformed LSTM, LSTM-CNN and other state-of-the-art approaches for sentiment classification on IMDb movie reviews.
机译:随着文本数据的巨大扩展,在分析用户对特定产品,公司或任何其他物理或虚拟实体的角度来说,在分析用户的角度来发挥至关重要的作用。情绪分析有助于我们分析关于实体的用户审查,然后根据从评论中提取的情绪抽出结论。卷积神经网络(CNN)和长期内存网络(LSTM)是两个用于情感分析的众所周知的深神经网络。在本文中,我们在IMDB电影审查中比较了CNN,LSTM和LSTM-CNN架构进行情感分类,以便找到数据集的最适合架构。实验结果表明,CNN已达到91%的F分,这为IMDB电影评论的情绪分类的表现优于LSTM,LSTM-CNN和其他最先进的方法。

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