Saved in:
Bibliographic Details
Main Authors: Jung, Yeonsung, Padhi, Trilok, Shaham, Sina, Khullar, Dipika, Jeong, Joonhyun, Mehrabi, Ninareh, Yang, Eunho
Format: Preprint
Published: 2025
Subjects:
Online Access:https://arxiv.org/abs/2511.22254
Tags: Add Tag
No Tags, Be the first to tag this record!
_version_ 1866910009427755008
author Jung, Yeonsung
Padhi, Trilok
Shaham, Sina
Khullar, Dipika
Jeong, Joonhyun
Mehrabi, Ninareh
Yang, Eunho
author_facet Jung, Yeonsung
Padhi, Trilok
Shaham, Sina
Khullar, Dipika
Jeong, Joonhyun
Mehrabi, Ninareh
Yang, Eunho
contents The rapid progress of large foundation models has accelerated the development of task-specialized agents across diverse domains. However, the effectiveness of agents remains tightly coupled with the quality of training data, while curating task-specific datasets remains costly and often infeasible in real-world scenarios. Recent work has explored self-improving agents that autonomously generate, refine, and re-train on their own trajectories. A prominent line of approaches further leverages preference optimization by pairing predicted trajectories with scarce ground-truth trajectories, enabling agents to learn directly from their own failures. While these methods outperform supervised fine-tuning, their heavy reliance on predicted trajectories under limited ground-truth supervision leaves them prone to overfitting. To address this, we propose a co-evolving agents framework in which a target agent improves jointly with an auxiliary failure agent. The failure agent learns through preference optimization over failure trajectories from both the target and itself, thereby generating hard negatives that are close to success yet remain failures. Incorporating these informative hard negatives into the target agent's optimization sharpens decision boundaries and enhances generalization. Our comprehensive analysis and experiments across benchmark datasets show that our method not only shows improved performance but also demonstrates that failures, instead of being used as-is, can be systematically transformed into structured and valuable learning signals in self-improving agents.
format Preprint
id arxiv_https___arxiv_org_abs_2511_22254
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle Co-Evolving Agents: Learning from Failures as Hard Negatives
Jung, Yeonsung
Padhi, Trilok
Shaham, Sina
Khullar, Dipika
Jeong, Joonhyun
Mehrabi, Ninareh
Yang, Eunho
Artificial Intelligence
The rapid progress of large foundation models has accelerated the development of task-specialized agents across diverse domains. However, the effectiveness of agents remains tightly coupled with the quality of training data, while curating task-specific datasets remains costly and often infeasible in real-world scenarios. Recent work has explored self-improving agents that autonomously generate, refine, and re-train on their own trajectories. A prominent line of approaches further leverages preference optimization by pairing predicted trajectories with scarce ground-truth trajectories, enabling agents to learn directly from their own failures. While these methods outperform supervised fine-tuning, their heavy reliance on predicted trajectories under limited ground-truth supervision leaves them prone to overfitting. To address this, we propose a co-evolving agents framework in which a target agent improves jointly with an auxiliary failure agent. The failure agent learns through preference optimization over failure trajectories from both the target and itself, thereby generating hard negatives that are close to success yet remain failures. Incorporating these informative hard negatives into the target agent's optimization sharpens decision boundaries and enhances generalization. Our comprehensive analysis and experiments across benchmark datasets show that our method not only shows improved performance but also demonstrates that failures, instead of being used as-is, can be systematically transformed into structured and valuable learning signals in self-improving agents.
title Co-Evolving Agents: Learning from Failures as Hard Negatives
topic Artificial Intelligence
url https://arxiv.org/abs/2511.22254