MAPLE: Multi-Agent Adaptive Planning with Long-Term Memory for Table Reasoning
MAPLE: Multi-Agent Adaptive Planning with Long-Term Memory for Table Reasoning
Table-based question answering requires complex reasoning capabilities that current LLMs struggle to achieve with single-pass inference. Existing approaches, such as Chain-of-Thought reasoning and question decomposition, lack error detection mechanisms and discard problem-solving experiences, contrasting sharply with how humans tackle such problems. In this paper, we propose MAPLE (Multi-agent Adaptive Planning with Long-term mEmory), a novel framework that mimics human problem-solving through specialized cognitive agents working in a feedback-driven loop. MAPLE integrates 4 key components: (1) a Solver using the ReAct paradigm for reasoning, (2) a Checker for answer verification, (3) a Reflector for error diagnosis and strategy correction, and (4) an Archiver managing long-term memory for experience reuse and evolution. Experiments on WiKiTQ and TabFact demonstrate significant improvements over existing methods, achieving state-of-the-art performance across multiple LLM backbones.
Ye Bai、Minghan Wang、Thuy-Trang Vu
计算技术、计算机技术
Ye Bai,Minghan Wang,Thuy-Trang Vu.MAPLE: Multi-Agent Adaptive Planning with Long-Term Memory for Table Reasoning[EB/OL].(2025-06-06)[2025-06-21].https://arxiv.org/abs/2506.05813.点此复制
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