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An Improved Approach for Text Sentiment Classification Based on a Deep Neural Network via a Sentiment Attention Mechanism

机译:一种基于深度神经网络的情感注意机制的文本情感分类改进方法

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Text sentiment analysis is an important but challenging task. Remarkable success has been achieved along with the wide application of deep learning methods, but deep learning methods dealing with text sentiment classification tasks cannot fully exploit sentiment linguistic knowledge, which hinders the development of text sentiment analysis. In this paper, we propose a sentiment-feature-enhanced deep neural network (SDNN) to address the problem by integrating sentiment linguistic knowledge into a deep neural network via a sentiment attention mechanism. Specifically, first we introduce a novel sentiment attention mechanism to help select the crucial sentiment-word-relevant context words by leveraging the sentiment lexicon in an attention mechanism, which bridges the gap between traditional sentiment linguistic knowledge and current popular deep learning methods. Second, we develop an improved deep neural network to extract sequential correlation information and text local features by combining bidirectional gated recurrent units with a convolutional neural network, which further enhances the ability of comprehensive text representation learning. With this design, the SDNN model can generate a powerful semantic representation of text to improve the performance of text sentiment classification tasks. Extensive experiments were conducted to evaluate the effectiveness of the proposed SDNN model on two real-world datasets with a binary-sentiment-label and a multi-sentiment-label. The experimental results demonstrated that the SDNN achieved substantially better performance than the strong competitors for text sentiment classification tasks.
机译:文本情感分析是一项重要但具有挑战性的任务。随着深度学习方法的广泛应用,已经取得了巨大的成功,但是处理文本情感分类任务的深度学习方法不能充分利用情感语言学知识,这阻碍了文本情感分析的发展。在本文中,我们提出了一种情感特征增强型深度神经网络(SDNN),以通过情感注意机制将情感语言学知识集成到深度神经网络中来解决该问题。具体来说,首先,我们引入一种新颖的情感注意机制,通过在关注机制中利用情感词典来帮助选择与情感词相关的关键语境词,从而弥合传统情感语言知识与当前流行的深度学习方法之间的鸿沟。其次,我们开发了一种改进的深度神经网络,通过将双向门控递归单元与卷积神经网络相结合来提取顺序相关信息和文本局部特征,从而进一步增强了全面的文本表示学习能力。通过这种设计,SDNN模型可以生成强大的文本语义表示形式,以改善文本情感分类任务的性能。进行了广泛的实验,以评估所提出的SDNN模型在两个带有二元情感标签和多情感标签的真实世界数据集上的有效性。实验结果表明,在文本情感分类任务上,SDNN的性能明显优于强大的竞争对手。

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