基于分层语义注意网络的多模态舆情分析

Nan Xu
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引用次数: 31

摘要

公众情绪被视为事件检测、信息安全、政策制定等的重要指标。与传统的基于文本和图像的情感分析相比,舆情分析越来越依赖于大量的多模态内容。然而,以往的工作大多是直接从图像中提取特征作为文本情态的附加信息,然后将这些特征合并进行多模态情感分析。图像中更详细的语义信息,如图像标题,包含对情感分析有用的语义成分,被忽略了。本文提出了一种基于图像标题的分层语义注意网络HSAN,用于多模态情感分析。它具有层次结构,反映了tweet的层次结构,并在多模态情感分析任务中使用图像标题提取视觉语义特征作为文本的附加信息。我们还引入了上下文注意机制,该机制学习考虑上下文信息进行编码。在两个公共数据集上的实验表明了该模型的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Analyzing multimodal public sentiment based on hierarchical semantic attentional network
Public sentiment is regarded as an important measure for event detection, information security, policy making etc. Analyzing public sentiments relies more and more on large amount of multimodal contents, in contrast to the traditional text-based and image-based sentiment analysis. However, most previous works directly extract feature from image as the additional information for text modality and then merge these features for multimodal sentiment analysis. More detailed semantic information in image, like image caption which contains useful semantic components for sentiment analysis, has been ignored. In this paper, we propose a Hierarchical Semantic Attentional Network based on image caption, HSAN, for multimodal sentiment analysis. It has a hierarchical structure that reflects the hierarchical structure of tweet and uses image caption to extract visual semantic feature as the additional information for text in multimodal sentiment analysis task. We also introduce the attention with context mechanism, which learns to consider the context information for encoding. The experiments on two public available datasets show the effectiveness of our model.
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