基于BiGRU-CNN模型的面向方面情感分类

Dr. Sindhu C, Bihanga Som, S. Singh
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引用次数: 2

摘要

互联网上的人们产生了大量的评论数据来分享他们对日常生活中产品和服务的看法,这些评论数据具有很大的商业价值。对于这些评论句来说,它们往往包含几个评论方面,而这些方面的情感是不同的,使得句子的整体意义因为两极分化而没有意义。面向层面情感分类的目的是识别对象在语境中的感觉极端。深度学习正朝着越来越成熟的方向发展,利用深度学习方法来检测情绪也越来越受欢迎。将卷积神经网络与双向门控循环单元相结合,提出了一种情感分类模型。双向门控循环单元类似于长短期记忆,是一种处理复杂度较低的时间循环神经网络。该模型首先通过双向门控循环单元提取文本的序列特征,然后通过卷积神经网络提取文本的局部静态特征。最后,使用Sigmoid分类器进行最终的情感分类。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Aspect-Oriented Sentiment Classification using BiGRU-CNN model
People on the Internet have generated a large amount of commentary data to share their opinions about products and services in their daily lives which include large commercial value. For these comment sentences, they often include several comment aspects, and the sentiment varies on these aspects, making the overall meaning of the sentence meaningless for polarization. The purpose of the aspect-level sentiment classification is to recognize target’s sense extremity in context. Deep Learning is evolving in an increasingly mature direction, and the utilization of deep learning methods to detect emotion has become increasingly popular. A sentiment classification model is propsoed by combining a convolutional neural network and a bidirectional gated recurrent unit.Bidirectional gated recurrent unit is similar to Long short-term memory, a time cyclic neural network with a lesser processing complexity. The model first extracts sequence features of the text through the bidirectional gated recurrent unit and then extracts the local static features of the text through the convolutional neural network. Finally, the Sigmoid classifier is used for the final sentiment classification.
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