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Test-Time Matching: Unlocking Compositional Reasoning in Multimodal Models

Artificial Intelligence 2026-04-27 v2 Computation and Language Computer Vision and Pattern Recognition Machine Learning

Abstract

Frontier AI models have achieved remarkable progress, yet recent studies suggest they struggle with compositional reasoning, often performing at or below random chance on established benchmarks. We revisit this problem and show that widely used evaluation metrics systematically underestimate model capability. To correct this artifact, we introduce a group matching score that more faithfully evaluates model capability. Moreover, correctness under the new metric can be translated into correctness under existing metrics via a simple overfitting step. This adjustment enables SigLIP-B16 to surpass all previous results and GPT-4.1 to yield the first result surpassing estimated human performance on Winoground. Building on this insight, we propose Test-Time Matching (TTM), an iterative, self-improving algorithm that further bootstraps model performance without any external supervision. TTM delivers additional, non-trivial improvements: for example, TTM enables SigLIP-B16 to surpass GPT-4.1 on MMVP-VLM, establishing a new state of the art. TTM also extends beyond contrastive vision-language models, yielding clear gains on a generative multimodal model across benchmarks. Importantly, TTM remains broadly effective even on benchmarks without metric-induced effects or group structures, achieving relative gains up to 85.7% on challenging datasets such as WhatsUp. Across 16 dataset variants spanning diverse setups, our experiments demonstrate that TTM consistently improves model performance and advances the frontier of compositional reasoning.

Keywords

Cite

@article{arxiv.2510.07632,
  title  = {Test-Time Matching: Unlocking Compositional Reasoning in Multimodal Models},
  author = {Yinglun Zhu and Jiancheng Zhang and Fuzhi Tang},
  journal= {arXiv preprint arXiv:2510.07632},
  year   = {2026}
}

Comments

To appear at ICLR 2026; extended results to generative multimodal models

R2 v1 2026-07-01T06:25:28.087Z