基于多头自注意和卷积块注意模块的多模态情感分析

Feng Geng, Haihoua Yang, Changde Wu, Jinqiang Li
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引用次数: 3

摘要

讽刺是一种情感表达。在社交媒体上,讽刺通常用来表达看似陈述的内容和所说内容的相反。以前的自动讽刺检测主要集中在文本上。随着社交媒体平台上图片分享模式的兴起,文字并不能完全展现用户的情感,于是人们开始研究将文字和图片相结合的多模态情感分析。在讽刺语检测方面,以往的研究主要采用双向长短期记忆网络(Bi-LSTM)和残差网络(ResNet)分别提取文本和图像的特征向量。而在Bi-LSTM模型中加入多头自注意(MH-SA)进行关系提取,可以有效避免传统任务中复杂的特征工程。在图像提取过程中,使用通道注意模块(CAM)和空间注意模块(SAM)对不同的空间和通道特征进行加权,对图像的不同区域和特征进行关注。两者相辅相成,极大地提高了网络表达特征的能力。在Twitter数据集上,我们提出的模型具有87.55%的讽刺检测准确率,优于当前论文中提出的大多数模型。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Multimodal sentiment analysis based on multi-head self-attention and convolutional block attention module
Sarcasm is a type of emotional expression. Sarcasm is commonly used on social media to express the inverse of what appears to be a statement and what is said. Previous automatic sarcasm detection mainly focused on text. With the rise of image sharing mode on social media platforms, text cannot fully reveal users’ emotions, so people begin to study multimodal sentiment analysis by combining text and images. Previous researches on sarcasm detection have used Bidirectional Long Short-term Memory Network (Bi-LSTM) and Residual Network (ResNet) to extract text and image feature vectors, respectively. While Multi-Head Self-Attention (MH-SA) is added to the Bi-LSTM model to perform relation extraction, which can effectively avoid complex feature engineering in traditional tasks. In the process of image extraction, the channel attention module (CAM) and the spatial attention module (SAM) are used to weight different spatial and channel features and focus on different regions and features of the image. The two complement each other, greatly improving the network’s ability to express features. On the Twitter dataset, our proposed model has a sarcasm detection accuracy of 87.55 %, which outperforms most models proposed in current papers.
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