Negate or Embrace: On How Misalignment Shapes Multimodal Representation Learning
- URL: http://arxiv.org/abs/2504.10143v3
- Date: Tue, 29 Apr 2025 13:33:30 GMT
- Title: Negate or Embrace: On How Misalignment Shapes Multimodal Representation Learning
- Authors: Yichao Cai, Yuhang Liu, Erdun Gao, Tianjiao Jiang, Zhen Zhang, Anton van den Hengel, Javen Qinfeng Shi,
- Abstract summary: Multimodal representation learning aims to learn powerful representations by aligning cues across modalities.<n>Recent research has revealed that real-world datasets often exhibit misalignment.
- Score: 37.29274397631946
- License: http://creativecommons.org/licenses/by-sa/4.0/
- Abstract: Multimodal representation learning, exemplified by multimodal contrastive learning (MMCL) using image-text pairs, aims to learn powerful representations by aligning cues across modalities. This approach relies on the core assumption that the exemplar image-text pairs constitute two representations of an identical concept. However, recent research has revealed that real-world datasets often exhibit misalignment. There are two distinct viewpoints on how to address this issue: one suggests mitigating the misalignment, and the other leveraging it. We seek here to reconcile these seemingly opposing perspectives, and to provide a practical guide for practitioners. Using latent variable models we thus formalize misalignment by introducing two specific mechanisms: selection bias, where some semantic variables are missing, and perturbation bias, where semantic variables are distorted -- both affecting latent variables shared across modalities. Our theoretical analysis demonstrates that, under mild assumptions, the representations learned by MMCL capture exactly the information related to the subset of the semantic variables invariant to selection and perturbation biases. This provides a unified perspective for understanding misalignment. Based on this, we further offer actionable insights into how misalignment should inform the design of real-world ML systems. We validate our theoretical findings through extensive empirical studies on both synthetic data and real image-text datasets, shedding light on the nuanced impact of misalignment on multimodal representation learning.
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