AICLOct 28, 2023

DetermLR: Augmenting LLM-based Logical Reasoning from Indeterminacy to Determinacy

arXiv:2310.18659v251 citationsh-index: 11
Originality Incremental advance
AI Analysis

This work improves logical reasoning in LLMs for AI applications, but it is incremental as it builds on existing multi-step reasoning methods.

The paper tackles the problem of enhancing LLM-based logical reasoning by addressing challenges like limited adaptability, insufficient precision, and inadequate use of historical experiences, proposing DetermLR to evolve reasoning from indeterminacy to determinacy, and it achieves higher accuracy with fewer steps across benchmarks such as LogiQA and ProofWriter.

Recent advances in large language models (LLMs) have revolutionized the landscape of reasoning tasks. To enhance the capabilities of LLMs to emulate human reasoning, prior studies have focused on modeling reasoning steps using various thought structures like chains, trees, or graphs. However, LLM-based reasoning still encounters the following challenges: (1) Limited adaptability of preset structures to diverse tasks; (2) Insufficient precision in exploiting known conditions to derive new ones; and (3) Inadequate consideration of historical reasoning experiences for subsequent reasoning steps. To this end, we propose DetermLR, a novel perspective that rethinks the reasoning process as an evolution from indeterminacy to determinacy. First, we categorize known conditions into two types: determinate and indeterminate premises This provides an oveall direction for the reasoning process and guides LLMs in converting indeterminate data into progressively determinate insights. Subsequently, we leverage quantitative measurements to prioritize more relevant premises to explore new insights. Furthermore, we automate the storage and extraction of available premises and reasoning paths with reasoning memory, preserving historical reasoning details for subsequent reasoning steps. Comprehensive experimental results demonstrate that DetermLR surpasses all baselines on various logical reasoning benchmarks: LogiQA, ProofWriter, FOLIO, PrOntoQA, and LogicalDeduction. Compared to previous multi-step reasoning methods, DetermLR achieves higher accuracy with fewer reasoning steps, highlighting its superior efficiency and effectiveness in solving logical reasoning tasks.

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

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