Litcius/Paper detail

Hierarchical Interactive Multimodal Transformer for Aspect-Based Multimodal Sentiment Analysis

Jianfei Yu, Kai Chen, Rui Xia

2022IEEE Transactions on Affective Computing128 citationsDOI

Abstract

Aspect-based multimodal sentiment analysis (ABMSA) aims to determine the sentiment polarities of each aspect or entity mentioned in a multimodal post or review. Previous studies to ABMSA can be summarized into two subtasks: aspect-term based multimodal sentiment classification (ATMSC) and aspect-category based multimodal sentiment classification (ACMSC). However, these existing studies have three shortcomings: (1) ignoring the object-level semantics in images; (2) primarily focusing on aspect-text and aspect-image interactions; (3) failing to consider the semantic gap between text and image representations. To tackle these issues, we propose a general Hierarchical Interactive Multimodal Transformer (HIMT) model for ABMSA. Specifically, we extract salient features with semantic concepts from images via an object detection method, and then propose a hierarchical interaction module to first model the aspect-text and aspect-image interactions, followed by capturing the text-image interactions. Moreover, an auxiliary reconstruction module is devised to largely eliminate the semantic gap between text and image representations. Experimental results show that our HIMT model significantly outperforms state-of-the-art methods on two benchmarks for ATMSC and one benchmark for ACMSC.

Topics & Concepts

Computer scienceSalientSemantic gapArtificial intelligenceSentiment analysisSemantics (computer science)Benchmark (surveying)Natural language processingTransformerImage (mathematics)Pattern recognition (psychology)Information retrievalImage retrievalPhysicsVoltageQuantum mechanicsGeographyProgramming languageGeodesySentiment Analysis and Opinion MiningTopic ModelingAdvanced Text Analysis Techniques
Hierarchical Interactive Multimodal Transformer for Aspect-Based Multimodal Sentiment Analysis | Litcius