Image-to-Text Conversion and Aspect-Oriented Filtration for Multimodal Aspect-Based Sentiment Analysis

计算机科学 嵌入 安全性令牌 人工智能 桥接(联网) 杠杆(统计) 自然语言处理 代表(政治) 情绪分析 情态动词 模式 噪音(视频) 情报检索 图像(数学) 模式识别(心理学) 社会学 政治 计算机安全 化学 高分子化学 法学 社会科学 计算机网络 政治学
作者
Qianlong Wang,Hongling Xu,Zhiyuan Wen,Bin Liang,Min Yang,Bing Qin,Ruifeng Xu
出处
期刊:IEEE Transactions on Affective Computing [Institute of Electrical and Electronics Engineers]
卷期号:15 (3): 1264-1278 被引量:26
标识
DOI:10.1109/taffc.2023.3333200
摘要

Multimodal aspect-based sentiment analysis (MABSA) aims to determine the sentiment polarity of each aspect mentioned in the text based on multimodal content. Various approaches have been proposed to model multimodal sentiment features for each aspect via modal interactions. However, most existing approaches have two shortcomings: (1) The representation gap between textual and visual modalities may increase the risk of misalignment in modal interactions; (2) In some examples where the image is not related to the text, the visual information may not enrich the textual modality when learning aspect-based sentiment features. In such cases, blindly leveraging information from visual modal may introduce noises in reasoning the aspect-based sentiment expressions. To tackle the shortcomings mentioned above, we propose an end-to-end MABSA framework with image conversion and noise filtration. Specifically, to bridge the representation gap in different modalities, we attempt to translate images into the input space of a pre-trained language model (PLM). To this end, we develop an image-to-text conversion module that can convert an image to an implicit sequence of token embedding. Moreover, an aspect-oriented filtration module is devised to alleviate the noise in the implicit token embeddings, which consists of two attention operations. The former aims to create an enhanced aspect embedding as a query, and the latter seeks to use this query to retrieve relevant auxiliary information from the implicit token embeddings to supplement the textual content. After filtering the noise, we leverage a PLM to encode the text, aspect, and image prompt derived from filtered implicit token embeddings as sentiment features to perform aspect-based sentiment prediction. Experimental results on two MABSA datasets show that our framework achieves state-of-the-art performance. Furthermore, extensive experimental analysis demonstrates the proposed framework has superior robustness and efficiency.
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