View a PDF of the paper titled MM-SHAP: A Performance-agnostic Metric for Measuring Multimodal Contributions in Vision and Language Models & Tasks, by Letitia Parcalabescu and Anette Frank
Abstract:Vision and language models (VL) are known to exploit unrobust indicators in individual modalities (e.g., introduced by distributional biases) instead of focusing on relevant information in each modality. That a unimodal model achieves similar accuracy on a VL task to a multimodal one, indicates that so-called unimodal collapse occurred. However, accuracy-based tests fail to detect e.g., when the model prediction is wrong, while the model used relevant information from a modality. Instead, we propose MM-SHAP, a performance-agnostic multimodality score based on Shapley values that reliably quantifies in which proportions a multimodal model uses individual modalities. We apply MM-SHAP in two ways: (1) to compare models for their average degree of multimodality, and (2) to measure for individual models the contribution of individual modalities for different tasks and datasets. Experiments with six VL models — LXMERT, CLIP and four ALBEF variants — on four VL tasks highlight that unimodal collapse can occur to different degrees and in different directions, contradicting the wide-spread assumption that unimodal collapse is one-sided. Based on our results, we recommend MM-SHAP for analysing multimodal tasks, to diagnose and guide progress towards multimodal integration. Code available at url{this https URL}.
Submission history
From: Letitia Parcalabescu [view email]
[v1]
Thu, 15 Dec 2022 21:41:06 UTC (21,970 KB)
[v2]
Tue, 23 May 2023 12:36:12 UTC (20,873 KB)
[v3]
Wed, 18 Sep 2024 19:00:22 UTC (21,828 KB)
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