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Main Authors: Li, Yunfan, Xu, Bingbing, Tian, Xueyun, Xu, Xiucheng, Shen, Huawei
Format: Preprint
Published: 2026
Subjects:
Online Access:https://arxiv.org/abs/2601.07577
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author Li, Yunfan
Xu, Bingbing
Tian, Xueyun
Xu, Xiucheng
Shen, Huawei
author_facet Li, Yunfan
Xu, Bingbing
Tian, Xueyun
Xu, Xiucheng
Shen, Huawei
contents Recent advances in large language models (LLMs) have enabled agents to autonomously execute complex, long-horizon tasks, yet planning remains a primary bottleneck for reliable task execution. Existing methods typically fall into two paradigms: step-wise planning, which is reactive but often short-sighted; and one-shot planning, which generates a complete plan upfront yet is brittle to execution errors. Crucially, both paradigms suffer from entangled contexts, where the agent must reason over a monolithic history spanning multiple sub-tasks. This entanglement increases cognitive load and lets local errors propagate across otherwise independent decisions, making recovery computationally expensive. To address this, we propose Task-Decoupled Planning (TDP), a training-free framework that replaces entangled reasoning with task decoupling. TDP decomposes tasks into a directed acyclic graph (DAG) of sub-goals via a Supervisor. Using a Planner and Executor with scoped contexts, TDP confines reasoning and replanning to the active sub-task. This isolation prevents error propagation and corrects deviations locally without disrupting the workflow. Results on TravelPlanner, ScienceWorld, and HotpotQA show that TDP outperforms strong baselines while reducing token consumption by up to 82%, demonstrating that sub-task decoupling improves both robustness and efficiency for long-horizon agents.
format Preprint
id arxiv_https___arxiv_org_abs_2601_07577
institution arXiv
publishDate 2026
record_format arxiv
spellingShingle Beyond Entangled Planning: Task-Decoupled Planning for Long-Horizon Agents
Li, Yunfan
Xu, Bingbing
Tian, Xueyun
Xu, Xiucheng
Shen, Huawei
Artificial Intelligence
Recent advances in large language models (LLMs) have enabled agents to autonomously execute complex, long-horizon tasks, yet planning remains a primary bottleneck for reliable task execution. Existing methods typically fall into two paradigms: step-wise planning, which is reactive but often short-sighted; and one-shot planning, which generates a complete plan upfront yet is brittle to execution errors. Crucially, both paradigms suffer from entangled contexts, where the agent must reason over a monolithic history spanning multiple sub-tasks. This entanglement increases cognitive load and lets local errors propagate across otherwise independent decisions, making recovery computationally expensive. To address this, we propose Task-Decoupled Planning (TDP), a training-free framework that replaces entangled reasoning with task decoupling. TDP decomposes tasks into a directed acyclic graph (DAG) of sub-goals via a Supervisor. Using a Planner and Executor with scoped contexts, TDP confines reasoning and replanning to the active sub-task. This isolation prevents error propagation and corrects deviations locally without disrupting the workflow. Results on TravelPlanner, ScienceWorld, and HotpotQA show that TDP outperforms strong baselines while reducing token consumption by up to 82%, demonstrating that sub-task decoupling improves both robustness and efficiency for long-horizon agents.
title Beyond Entangled Planning: Task-Decoupled Planning for Long-Horizon Agents
topic Artificial Intelligence
url https://arxiv.org/abs/2601.07577