Robust Multimodal Sentiment Analysis via Double Information Bottleneck
Huiting Huang, Tieliang Gong, Kai He, Jialun Wu, Erik Cambria, Mengling Feng

TL;DR
This paper introduces a Double Information Bottleneck approach for multimodal sentiment analysis that enhances robustness to noise and improves the fusion of unimodal and multimodal data, leading to better performance.
Contribution
It proposes a novel DIB strategy with a low-rank Renyi entropy framework to effectively filter noise and fuse multimodal data, advancing the state-of-the-art in sentiment analysis.
Findings
Achieves 47.4% accuracy on CMU-MOSI
Reaches 81.63% F1-score on CH-SIMS
Shows minimal performance degradation under noise
Abstract
Multimodal sentiment analysis has received significant attention across diverse research domains. Despite advancements in algorithm design, existing approaches suffer from two critical limitations: insufficient learning of noise-contaminated unimodal data, leading to corrupted cross-modal interactions, and inadequate fusion of multimodal representations, resulting in discarding discriminative unimodal information while retaining multimodal redundant information. To address these challenges, this paper proposes a Double Information Bottleneck (DIB) strategy to obtain a powerful, unified compact multimodal representation. Implemented within the framework of low-rank Renyi's entropy functional, DIB offers enhanced robustness against diverse noise sources and computational tractability for high-dimensional data, as compared to the conventional Shannon entropy-based methods. The DIB…
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Taxonomy
TopicsSentiment Analysis and Opinion Mining · Emotion and Mood Recognition · Generative Adversarial Networks and Image Synthesis
