AISep 23, 2025

Code Driven Planning with Domain-Adaptive Critic

arXiv:2509.19077v11 citationsh-index: 26
Originality Incremental advance
AI Analysis

This addresses the issue of high query costs and short-term planning limitations for AI agents using LLMs in sequential decision-making tasks, representing a strong incremental improvement over existing methods.

The paper tackles the problem of LLM-based task planners generating inaccurate plans due to a gap between general knowledge and environment-specific requirements, and reduces query costs by using high-level planning programs and a domain-adaptive critic, achieving a 23.33% improvement in success rate and a 91.27% reduction in query costs across benchmarks.

Large Language Models (LLMs) have been widely adopted as task planners for AI agents in sequential decision-making problems, leveraging their extensive world knowledge. However, the gap between their general knowledge and environment-specific requirements often leads to inaccurate plans. To address this, existing approaches rely on frequent LLM queries to iteratively refine plans based on immediate environmental feedback, which incurs substantial query costs. However, this refinement is typically guided by short-term environmental feedback, limiting LLMs from developing plans aligned with long-term rewards. We propose Code Driven Planning with Domain-Adaptive Critic (CoPiC). Instead of relying on frequent queries, CoPiC employs LLMs to generate a diverse set of high-level planning programs, which iteratively produce and refine candidate plans. A trained domain-adaptive critic then evaluates these candidates and selects the one most aligned with long-term rewards for execution. Using high-level planning programs as planner and domain-adaptive critic as estimator, CoPiC improves planning while significantly reducing query costs. Results in ALFWorld, NetHack, and StarCraft II Unit Building show that CoPiC outperforms advanced LLM-based baselines, AdaPlanner and Reflexion, achieving an average (1) 23.33% improvement in success rate and (2) 91.27% reduction in query costs.

Foundations

The foundational work for this paper's niche, ranked by how specifically the neighbourhood builds on it — not by global fame.

Your Notes