Multi-Attention Multimodal Sentiment Analysis

Taeyong Kim, Bowon Lee
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引用次数: 17

Abstract

Sentiment analysis plays an important role in natural-language processing. It has been performed on multimodal data including text, audio, and video. Previously conducted research does not make full utilization of such heterogeneous data. In this study, we propose a model of Multi-Attention Recurrent Neural Network (MA-RNN) for performing sentiment analysis on multimodal data. The proposed network consists of two attention layers and a Bidirectional Gated Recurrent Neural Network (BiGRU). The first attention layer is used for data fusion and dimensionality reduction, and the second attention layer is used for the augmentation of BiGRU to capture key parts of the contextual information among utterances. Experiments on multimodal sentiment analysis indicate that our proposed model achieves the state-of-the-art performance of 84.31% accuracy on the Multimodal Corpus of Sentiment Intensity and Subjectivity Analysis (CMU-MOSI) dataset. Furthermore, an ablation study is conducted to evaluate the contributions of different components of the network. We believe that our findings of this study may also offer helpful insights into the design of models using multimodal data.
多注意多模态情感分析
情感分析在自然语言处理中起着重要的作用。它已经在包括文本、音频和视频在内的多模态数据上执行。以往的研究并没有充分利用这种异构数据。在这项研究中,我们提出了一个多注意递归神经网络(MA-RNN)模型,用于对多模态数据进行情感分析。该网络由两个注意层和一个双向门控递归神经网络(BiGRU)组成。第一注意层用于数据融合和降维,第二注意层用于BiGRU的增强,以捕获话语中上下文信息的关键部分。多模态情感分析实验表明,该模型在多模态情感强度与主观性分析语料库(mu - mosi)数据集上达到了84.31%的准确率。此外,还进行了消融研究,以评估网络中不同组成部分的贡献。我们相信我们的研究结果也可以为使用多模态数据的模型设计提供有益的见解。
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