CLAIApr 11, 2025

Fast-Slow-Thinking: Complex Task Solving with Large Language Models

arXiv:2504.08690v14 citationsh-index: 4
Originality Incremental advance
AI Analysis

This work addresses a bottleneck in LLM-based complex task solving for AI researchers and practitioners, but it is incremental as it builds on existing task decomposition approaches.

The paper tackles the problem of suboptimal performance in existing task decomposition methods for large language models (LLMs) when tasks have complex logic and constraints, by introducing the Fast-Slow-Thinking (FST) method, which improves answer quality through a coarse-to-fine process, as demonstrated in experiments on three task types.

Nowadays, Large Language Models (LLMs) have been gradually employed to solve complex tasks. To face the challenge, task decomposition has become an effective way, which proposes to divide a complex task into multiple simpler subtasks and then solve them separately so that the difficulty of the original task can be reduced. However, the performance of existing task decomposition methods can be suboptimal when the task contains overly complex logic and constraints. In this situation, the solution generated by LLMs may deviate from the original purpose of the task, or contain redundant or even erroneous content. Therefore, inspired by the fact that humans possess two thinking systems including fast thinking and slow thinking, this paper introduces a new task decomposition method termed ``Fast-Slow-Thinking'' (FST), which stimulates LLMs to solve tasks through the cooperation of Fast Thinking (FT) and Slow Thinking (ST) steps. Here FT focuses more on the general and concise aspect of the task, and ST focuses more on the details of the task. In FT, LLMs are prompted to remove the constraints of the original task, therefore simplifying it to a general and concise one. In ST, we recall the constraints removed in FT, so that LLMs can improve the answer generated in FT to meet the requirements of the original task. Therefore, our FST method enables LLMs to consider a complex problem via a human-like cognition process from coarse to fine, the effectiveness of which has been well demonstrated by the experiments on three types of tasks.

Foundations

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