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Attention Aware Bidirectional Gated Recurrent Unit Based Framework for Sentiment Analysis

机译:注意感知双向门控复发单位的情感分析框架

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Sentiment analysis is an effective technique and widely employed to analyze sentiment polarity of reviews and comments on the Internet. A lot of advanced methods have been developed to solve this task. In this paper, we propose an attention aware bidirectional GRU (Bi-GRU) framework to classify the sentiment polarity from the aspects of sentential-sequence modeling and word-feature seizing. It is composed of a pre-attention Bi-GRU to incorporate the complicated interaction between words by sentence modeling, and an attention layer to capture the keywords for sentiment apprehension. Afterward, a post-attention GRU is added to imitate the function of decoder, aiming to extract the predicted features conditioned on the above parts. Experimental study on commonly used datasets has demonstrated the proposed framework's potential for sentiment classification.
机译:情绪分析是一种有效的技术,并广泛用于分析互联网评论和评论的情感极性。已经开发了许多先进的方法来解决这项任务。在本文中,我们提出了一种注意,注意双向gru(bi-gru)框架,以将情谱极性与句子序列建模和字特征抓握的方面分类。它由一个预先注意力的Bi-GRU组成,以通过句子建模和注意层纳入单词之间的复杂相互作用,以捕获情绪忧虑的关键字。之后,添加了后关注的GRU以模仿解码器的功能,旨在提取在上述部分上调节的预测特征。常用数据集的实验研究已经证明了拟议的框架情绪分类的潜力。

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