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ProactiveBench: Benchmarking Proactiveness in Multimodal Large Language Models

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arxiv 2603.19466 v2 pith:X4XNA6AM submitted 2026-03-19 cs.CV

ProactiveBench: Benchmarking Proactiveness in Multimodal Large Language Models

classification cs.CV
keywords proactivenessproactivebenchintroducelearningmllmsmodelsmultimodaloccluded
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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Effective collaboration begins with knowing when to ask for help. For example, when trying to identify an occluded object, a human would ask someone to remove the obstruction. Can MLLMs exhibit a similar "proactive" behavior by requesting simple user interventions? To investigate this, we introduce ProactiveBench, a benchmark built from seven repurposed datasets that tests proactiveness across different tasks such as recognizing occluded objects, enhancing image quality, and interpreting coarse sketches. We evaluate 22 MLLMs on ProactiveBench, showing that (i) they generally lack proactiveness; (ii) proactiveness does not correlate with model capacity; (iii) "hinting" at proactiveness yields only marginal gains. Surprisingly, we found that conversation histories and in-context learning introduce negative biases, hindering performance. Finally, we explore a simple fine-tuning strategy based on reinforcement learning: its results suggest that proactiveness can be learned, even generalizing to unseen scenarios. We publicly release ProactiveBench as a first step toward building proactive multimodal models.

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  1. Anticipate and Learn: Unleashing Idle-Time Compute in Proactive Agents

    cs.CL 2026-05 unverdicted novelty 6.0

    ProAct uses idle compute to anticipate user needs via dialogue history and memory, achieving 14.8% fewer turns, 11.7% less user effort, and 28.1% fewer hallucinations than reactive baselines on the new ProActEval benchmark.