Salvato in:
Dettagli Bibliografici
Autori principali: Zhu, Siyu, Jiang, Yanbin, Sang, Hejian, Tang, Shao, Song, Qingquan, He, Biao, Jain, Rohit, Wang, Zhipeng, Geramifard, Alborz
Natura: Preprint
Pubblicazione: 2025
Soggetti:
Accesso online:https://arxiv.org/abs/2509.25779
Tags: Aggiungi Tag
Nessun Tag, puoi essere il primo ad aggiungerne!!
_version_ 1866911188480163840
author Zhu, Siyu
Jiang, Yanbin
Sang, Hejian
Tang, Shao
Song, Qingquan
He, Biao
Jain, Rohit
Wang, Zhipeng
Geramifard, Alborz
author_facet Zhu, Siyu
Jiang, Yanbin
Sang, Hejian
Tang, Shao
Song, Qingquan
He, Biao
Jain, Rohit
Wang, Zhipeng
Geramifard, Alborz
contents We investigated Agentic RL with large language models on the \textsc{TravelPlanner} benchmark. Our approach, \textsc{Planner-R1}, achieved a \textbf{56.9\%} final-pass rate with only 180 training queries, a $2.7\times$ improvement over GPT-5's $21.2\%$ baseline and the strongest agentic result on the public leaderboard. A central finding was that smaller models (8B) were highly responsive to reward shaping: with dense process-level signals, they reached competitive performance while being $3.5\times$ more compute-efficient and $1.5\times$ more memory-efficient than 32B models. Larger models were more robust under sparse rewards but exhibited smaller relative gains from shaping and higher variance across runs. While curriculum learning offered no significant benefit, shaped rewards consistently amplified learning dynamics, making 8B models the most efficient setting for agentic RL. Crucially, these gains did not come at the cost of overfitting: fine-tuned models mostly maintained or exceeded baseline performance on out-of-domain tasks, including \textsc{Multi-IF}, \textsc{NaturalPlan}, and $τ$-\textsc{Bench}. These results establish reward shaping as a decisive lever for scaling agentic RL, highlight the competitive strength of smaller models, and demonstrate that efficiency can be achieved without sacrificing generalization.
format Preprint
id arxiv_https___arxiv_org_abs_2509_25779
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle Planner-R1: Reward Shaping Enables Efficient Agentic RL with Smaller LLMs
Zhu, Siyu
Jiang, Yanbin
Sang, Hejian
Tang, Shao
Song, Qingquan
He, Biao
Jain, Rohit
Wang, Zhipeng
Geramifard, Alborz
Artificial Intelligence
We investigated Agentic RL with large language models on the \textsc{TravelPlanner} benchmark. Our approach, \textsc{Planner-R1}, achieved a \textbf{56.9\%} final-pass rate with only 180 training queries, a $2.7\times$ improvement over GPT-5's $21.2\%$ baseline and the strongest agentic result on the public leaderboard. A central finding was that smaller models (8B) were highly responsive to reward shaping: with dense process-level signals, they reached competitive performance while being $3.5\times$ more compute-efficient and $1.5\times$ more memory-efficient than 32B models. Larger models were more robust under sparse rewards but exhibited smaller relative gains from shaping and higher variance across runs. While curriculum learning offered no significant benefit, shaped rewards consistently amplified learning dynamics, making 8B models the most efficient setting for agentic RL. Crucially, these gains did not come at the cost of overfitting: fine-tuned models mostly maintained or exceeded baseline performance on out-of-domain tasks, including \textsc{Multi-IF}, \textsc{NaturalPlan}, and $τ$-\textsc{Bench}. These results establish reward shaping as a decisive lever for scaling agentic RL, highlight the competitive strength of smaller models, and demonstrate that efficiency can be achieved without sacrificing generalization.
title Planner-R1: Reward Shaping Enables Efficient Agentic RL with Smaller LLMs
topic Artificial Intelligence
url https://arxiv.org/abs/2509.25779