LGAPOct 17, 2025

FSRF: Factorization-guided Semantic Recovery for Incomplete Multimodal Sentiment Analysis

arXiv:2510.16086v1h-index: 1ICME
Originality Incremental advance
AI Analysis

This addresses the low generalizability issue in real-world applications where modalities are often missing, representing an incremental improvement in handling incomplete data.

The paper tackles the problem of missing modalities in multimodal sentiment analysis by proposing a factorization-guided semantic recovery framework, achieving significant performance advantages over previous methods on two datasets.

In recent years, Multimodal Sentiment Analysis (MSA) has become a research hotspot that aims to utilize multimodal data for human sentiment understanding. Previous MSA studies have mainly focused on performing interaction and fusion on complete multimodal data, ignoring the problem of missing modalities in real-world applications due to occlusion, personal privacy constraints, and device malfunctions, resulting in low generalizability. To this end, we propose a Factorization-guided Semantic Recovery Framework (FSRF) to mitigate the modality missing problem in the MSA task. Specifically, we propose a de-redundant homo-heterogeneous factorization module that factorizes modality into modality-homogeneous, modality-heterogeneous, and noisy representations and design elaborate constraint paradigms for representation learning. Furthermore, we design a distribution-aligned self-distillation module that fully recovers the missing semantics by utilizing bidirectional knowledge transfer. Comprehensive experiments on two datasets indicate that FSRF has a significant performance advantage over previous methods with uncertain missing modalities.

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