中文

EvoAgentBench: Benchmarking Agent Self-Evolution via Ability Transfer

人工智能 2026-07-06 v1

摘要

Agent self-evolution in long-horizon LLM systems is largely procedural: useful experience is not merely stored information, but reusable procedures for searching, debugging, and verification. Yet current evaluations do not isolate this form of transfer. Agent benchmarks test single-episode task solving; memory benchmarks target information retention rather than procedural reuse. We introduce EvoAgentBench, a benchmark for agent self-evolution via Ability-guided transfer across four agentic domains: web research, algorithmic reasoning, software engineering, and knowledge work. EvoAgentBench extracts trace-grounded Abilities from agent executions, canonicalizes them into operational units, and builds domain-specific Ability Graphs linking tasks that share procedural overlap. By design, every test task is backed by verified training-side Ability support. Across a 528/267 train/test split, two scaffolds, and three backbones, curated Ability content transfers reliably across model families, but no current automatic method sustains positive gain in all settings. EvoAgentBench shifts self-evolution evaluation from aggregate accuracy comparison to fine-grained diagnosis of experience encoding, routing, and uptake. The benchmark is publicly available at https://huggingface.co/datasets/EverMind-AI/EvoAgentBench.

引用

@article{arxiv.2607.05202,
  title  = {EvoAgentBench: Benchmarking Agent Self-Evolution via Ability Transfer},
  author = {Xingze Gao and Chuanrui Hu and Hongda Chen and Pengfei Yao and Zhao Wang and Yi Bai and Zhengwei Wu and Yunyun Han and Xiaofeng Cong and Jie Gui and Yafeng Deng and Teng Li},
  journal= {arXiv preprint arXiv:2607.05202},
  year   = {2026}
}

备注

15 pages, 2 figures, 8 tables