AICLOct 12, 2025

A Layered Intuition -- Method Model with Scope Extension for LLM Reasoning

arXiv:2510.10592v13 citationsh-index: 1
Originality Incremental advance
AI Analysis

This work addresses the need for more robust and extensible reasoning in LLMs for real-world problem-solving, though it builds incrementally on existing approaches.

The paper tackles the problem of enhancing LLM reasoning for unseen issues by integrating intuition-based and method-based thinking with scope extension, resulting in a unified model that includes novel temporal and spatial extensions and an entropy-based evaluation metric.

Existing studies have introduced method-based reasoning and scope extension as approaches to enhance Large Language Model (LLM) performance beyond direct matrix mappings. Building on these foundations, this paper summarizes and integrates these ideas into a unified Intuition-Method Layered Model with Scope Extension, designed to address indirected (unseen) issues more systematically. In this framework, intuition-based thinking provides rapid first-reaction answers, while method-based thinking decouples questions and solutions into transferable reasoning units. Scope extension is then applied to broaden applicability, including vertical (cause analysis), horizontal (parallel and generalized issues), and for the first time, temporal and spatial extensions, which expand reasoning across time and contextual dimensions. These extensions are organized into systematic knowledge trees that interconnect into a knowledge network, thereby increasing adaptability. To quantitatively evaluate this process, we propose the entropy of method extension, which measures the independence and diversity of extensions as an indicator of the system's capacity to solve unseen questions. By logically connecting existing approaches with new extensions and introducing an entropy-based evaluation framework, this work advances toward a more robust and extensible reasoning paradigm for LLMs in real-world problem-solving.

Foundations

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