ICYM2I: The illusion of multimodal informativeness under missingness

Published in ICLR, 2026

Recommended citation: Choi*, Y.,Jeanselme*, V., and Joshi, S. ICYM2I: The illusion of multimodal informativeness under missingnes. https://arxiv.org/abs/2505.16953

Multimodal learning is of continued interest in artificial intelligence-based applications, motivated by the potential information gain from combining different types of data. However, modalities collected and curated during development may differ from the modalities available at deployment due to multiple factors including cost, hardware failure, or—as we argue in this work—the perceived informativeness of a given modality. Naive estimation of the information gain associated with including an additional modality without accounting for missingness may result in improper estimates of that modality’s value in downstream tasks. Our work formalizes the problem of missingness in multimodal learning and demonstrates the biases resulting from ignoring this process. To address this issue, we introduce~\methodname\ (In Case You Multimodal Missed It), a framework for the evaluation of predictive performance and information gain under missingness through inverse probability weighting-based correction. We demonstrate the importance of the proposed adjustment to estimate information gain under missingness on synthetic, semi-synthetic, and real-world medical datasets.