AI Agents

Inference-Time Scaling of Verification: Self-Evolving Deep Research Agents via Test-Time Rubric-Guided Verification

YYuxuan WanTTianqing FangZZaitang LiYYintong HuoWWenxuan WangHHaitao MiDDong YuMMichael R. Lyu
Published
January 22, 2026
Authors
8
Word Count
5,150

Enhancing DRA reliability through test-time verification.

Abstract

Recent advances in Deep Research Agents (DRAs) are transforming automated knowledge discovery and problem-solving. While the majority of existing efforts focus on enhancing policy capabilities via post-training, we propose an alternative paradigm: self-evolving the agent's ability by iteratively verifying the policy model's outputs, guided by meticulously crafted rubrics. This approach gives rise to the inference-time scaling of verification, wherein an agent self-improves by evaluating its generated answers to produce iterative feedback and refinements. We derive the rubrics based on an automatically constructed DRA Failure Taxonomy, which systematically classifies agent failures into five major categories and thirteen sub-categories. We present DeepVerifier, a rubrics-based outcome reward verifier that leverages the asymmetry of verification and outperforms vanilla agent-as-judge and LLM judge baselines by 12%-48% in meta-evaluation F1 score. To enable practical self-evolution, DeepVerifier integrates as a plug-and-play module during test-time inference. The verifier produces detailed rubric-based feedback, which is fed back to the agent for iterative bootstrapping, refining responses without additional training. This test-time scaling delivers 8%-11% accuracy gains on challenging subsets of GAIA and XBench-DeepResearch when powered by capable closed-source LLMs. Finally, to support open-source advancement, we release DeepVerifier-4K, a curated supervised fine-tuning dataset of 4,646 high-quality agent steps focused on DRA verification. These examples emphasize reflection and self-critique, enabling open models to develop robust verification capabilities.

Key Takeaways

  • 1

    Agent self-evolves during deployment without additional training.

  • 2

    Framework decomposes problems into simpler, verifiable sub-tasks.

  • 3

    Significant improvements in accuracy across benchmarks.

Limitations

  • Relies on the quality of failure taxonomy.

  • Dataset size and quality impact effectiveness.

Keywords

Deep Research Agentspolicy capabilitiespost-traininginference-time scalingverificationrubricsDRA Failure TaxonomyDeepVerifiertest-time scalingmeta-evaluationsupervised fine-tuningself-critique

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Inference-Time Scaling of Verification: Self-Evolving Deep Research Agents via Test-Time Rubric-Guided Verification | Paperchime