AIAug 24, 2023

SayCanPay: Heuristic Planning with Large Language Models using Learnable Domain Knowledge

arXiv:2308.12682v274 citationsh-index: 70
Originality Incremental advance
AI Analysis

This addresses the challenge of improving plan feasibility and efficiency in AI planning for applications requiring grounded and optimal action sequences, though it is incremental by integrating existing techniques.

The paper tackles the problem of generating feasible and cost-effective plans using Large Language Models (LLMs) by combining them with heuristic planning methods, resulting in a model that surpasses other LLM planning approaches in evaluations.

Large Language Models (LLMs) have demonstrated impressive planning abilities due to their vast "world knowledge". Yet, obtaining plans that are both feasible (grounded in affordances) and cost-effective (in plan length), remains a challenge, despite recent progress. This contrasts with heuristic planning methods that employ domain knowledge (formalized in action models such as PDDL) and heuristic search to generate feasible, optimal plans. Inspired by this, we propose to combine the power of LLMs and heuristic planning by leveraging the world knowledge of LLMs and the principles of heuristic search. Our approach, SayCanPay, employs LLMs to generate actions (Say) guided by learnable domain knowledge, that evaluates actions' feasibility (Can) and long-term reward/payoff (Pay), and heuristic search to select the best sequence of actions. Our contributions are (1) a novel framing of the LLM planning problem in the context of heuristic planning, (2) integrating grounding and cost-effective elements into the generated plans, and (3) using heuristic search over actions. Our extensive evaluations show that our model surpasses other LLM planning approaches.

Foundations

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

Your Notes