MulTaBench: Benchmarking Multimodal Tabular Learning with Text and Image
For researchers developing multimodal tabular foundation models, this benchmark provides a standardized evaluation framework that isolates the need for target-aware representations, enabling fair comparison and progress in the field.
The paper identifies that existing multimodal tabular benchmarks suffer from high variance due to focusing on co-occurrence of modalities, masking benefits of task-specific tuning. They introduce MulTaBench, a benchmark of 40 datasets (20 image-tabular, 20 text-tabular) designed to require complementary predictive signal, and show that target-aware representation tuning consistently improves performance across modalities, tabular learners, encoder scales, and embedding dimensions.
Tabular Foundation Models have recently established the state of the art in supervised tabular learning, by leveraging pretraining to learn generalizable representations of numerical and categorical structured data. However, they lack native support for unstructured modalities such as text and image, and rely on frozen, pretrained embeddings to process them. On established Multimodal Tabular Learning benchmarks, we show that tuning the embeddings to the task improves performance. Existing benchmarks, however, often focus on the mere co-occurrence of modalities; this leads to high variance across datasets and masks the benefits of task-specific tuning. To address this gap, we introduce MulTaBench, a benchmark of 40 datasets, split equally between image-tabular and text-tabular tasks. We focus on predictive tasks where the modalities provide complementary predictive signal, and where generic embeddings lose critical information, necessitating Target-Aware Representations that are aligned with the task. Our experimental results demonstrate that the gains from target-aware representation tuning generalize across both text and image modalities, several tabular learners, encoder scales, and embedding dimensions. MulTaBench constitutes the largest image-tabular benchmarking effort to date, spanning high-impact domains such as healthcare and e-commerce. It is designed to enable the research of novel architectures which incorporate joint modeling and target-aware representations, paving the way for the development of novel Multimodal Tabular Foundation Models.