Litcius/Paper detail

Multi-Grained Multimodal Interaction Network for Sentiment Analysis

Lingyong Fang, Gongshen Liu, Ru Zhang

202416 citationsDOI

Abstract

Multimodal sentiment analysis aims to utilize different modalities including language, visual, and audio to identify human emotions in videos. Multimodal interaciton mechanism is the key challenge. Previous works lack modeling of multimodal interaction at different grain levels, and does not suppress redundant information in multimodal interaction. This leads to incomplete multimodal representation with noisy information. To address these issues, we propose Multi-grained Multimodal Interaction Network (MMIN) to provide a more complete view of multimodal representation. Coarse-grained Interaction Network (CIN) exploits the unique characteristics of different modalities at a coarse-grained level and adversarial learning is used to reduce redundancy. Fine-grained Interaction Network (FIN) employ sparse-attention mechanism to capture fine-grained interactions between multimodal sequences across distinct time steps and reduce irrelevant fine-grained multimodal interaction. Experimental results on two public datasets demonstrate the effectiveness of our model in multimodal sentiment analysis.

Topics & Concepts

Computer scienceMultimodal learningModalitiesMultimodal interactionArtificial intelligenceExploitSentiment analysisMachine learningRepresentation (politics)MultimodalityAdversarial systemCRFSHuman–computer interactionConditional random fieldSocial sciencePoliticsSociologyComputer securityPolitical scienceLawWorld Wide WebSentiment Analysis and Opinion MiningMultimodal Machine Learning ApplicationsDomain Adaptation and Few-Shot Learning
Multi-Grained Multimodal Interaction Network for Sentiment Analysis | Litcius