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Main Authors: Xiong, Qian, Huang, Yuekai, Yang, Bo, Zheng, Yujia, Li, Tianhao, Jiang, Ziyou, Chang, Zhiyuan, Li, Zhaoyang, Feng, Huanxiang, Li, Mingyang
Format: Preprint
Published: 2026
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Online Access:https://arxiv.org/abs/2601.15120
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author Xiong, Qian
Huang, Yuekai
Yang, Bo
Zheng, Yujia
Li, Tianhao
Jiang, Ziyou
Chang, Zhiyuan
Li, Zhaoyang
Feng, Huanxiang
Li, Mingyang
author_facet Xiong, Qian
Huang, Yuekai
Yang, Bo
Zheng, Yujia
Li, Tianhao
Jiang, Ziyou
Chang, Zhiyuan
Li, Zhaoyang
Feng, Huanxiang
Li, Mingyang
contents LLMs have advanced tool-using agents for real-world applications, yet they often lead to unexpected behaviors or results. Beyond obvious failures, the subtle issue of "intent deviation" severely hinders reliable evaluation and performance improvement. Existing post-training methods generally leverage either real system samples or virtual data simulated by LLMs. However, the former is costly due to reliance on hand-crafted user requests, while the latter suffers from distribution shift from the real tools in the wild. Additionally, both methods lack negative samples tailored to intent deviation scenarios, hindering effective guidance on preference learning. We introduce RISE, a "Real-to-Virtual" method designed to mitigate intent deviation. Anchoring on verified tool primitives, RISE synthesizes virtual trajectories and generates diverse negative samples through mutation on critical parameters. With synthetic data, RISE fine-tunes backbone LLMs via the two-stage training for intent alignment. Evaluation results demonstrate that data synthesized by RISE achieve promising results in eight metrics covering user requires, execution trajectories and agent responses. Integrating with training, RISE achieves an average 35.28% improvement in Acctask (task completion) and 23.27% in Accintent (intent alignment), outperforming SOTA baselines by 1.20--42.09% and 1.17--54.93% respectively.
format Preprint
id arxiv_https___arxiv_org_abs_2601_15120
institution arXiv
publishDate 2026
record_format arxiv
spellingShingle Emerging from Ground: Addressing Intent Deviation in Tool-Using Agents via Deriving Real Calls into Virtual Trajectories
Xiong, Qian
Huang, Yuekai
Yang, Bo
Zheng, Yujia
Li, Tianhao
Jiang, Ziyou
Chang, Zhiyuan
Li, Zhaoyang
Feng, Huanxiang
Li, Mingyang
Artificial Intelligence
LLMs have advanced tool-using agents for real-world applications, yet they often lead to unexpected behaviors or results. Beyond obvious failures, the subtle issue of "intent deviation" severely hinders reliable evaluation and performance improvement. Existing post-training methods generally leverage either real system samples or virtual data simulated by LLMs. However, the former is costly due to reliance on hand-crafted user requests, while the latter suffers from distribution shift from the real tools in the wild. Additionally, both methods lack negative samples tailored to intent deviation scenarios, hindering effective guidance on preference learning. We introduce RISE, a "Real-to-Virtual" method designed to mitigate intent deviation. Anchoring on verified tool primitives, RISE synthesizes virtual trajectories and generates diverse negative samples through mutation on critical parameters. With synthetic data, RISE fine-tunes backbone LLMs via the two-stage training for intent alignment. Evaluation results demonstrate that data synthesized by RISE achieve promising results in eight metrics covering user requires, execution trajectories and agent responses. Integrating with training, RISE achieves an average 35.28% improvement in Acctask (task completion) and 23.27% in Accintent (intent alignment), outperforming SOTA baselines by 1.20--42.09% and 1.17--54.93% respectively.
title Emerging from Ground: Addressing Intent Deviation in Tool-Using Agents via Deriving Real Calls into Virtual Trajectories
topic Artificial Intelligence
url https://arxiv.org/abs/2601.15120