CLAISCJul 28, 2025

Speaking in Words, Thinking in Logic: A Dual-Process Framework in QA Systems

arXiv:2507.20491v1h-index: 2IJCNN
Originality Incremental advance
AI Analysis

This work addresses the need for transparent and explainable reasoning in specialized domains like education and healthcare, though it appears incremental as it builds on existing neural-symbolic frameworks.

The paper tackles the problem of inefficient translation of natural language to formal logic in closed-domain QA systems by introducing Text-JEPA, a lightweight framework that achieves competitive performance with lower computational overhead compared to larger LLM-based systems.

Recent advances in large language models (LLMs) have significantly enhanced question-answering (QA) capabilities, particularly in open-domain contexts. However, in closed-domain scenarios such as education, healthcare, and law, users demand not only accurate answers but also transparent reasoning and explainable decision-making processes. While neural-symbolic (NeSy) frameworks have emerged as a promising solution, leveraging LLMs for natural language understanding and symbolic systems for formal reasoning, existing approaches often rely on large-scale models and exhibit inefficiencies in translating natural language into formal logic representations. To address these limitations, we introduce Text-JEPA (Text-based Joint-Embedding Predictive Architecture), a lightweight yet effective framework for converting natural language into first-order logic (NL2FOL). Drawing inspiration from dual-system cognitive theory, Text-JEPA emulates System 1 by efficiently generating logic representations, while the Z3 solver operates as System 2, enabling robust logical inference. To rigorously evaluate the NL2FOL-to-reasoning pipeline, we propose a comprehensive evaluation framework comprising three custom metrics: conversion score, reasoning score, and Spearman rho score, which collectively capture the quality of logical translation and its downstream impact on reasoning accuracy. Empirical results on domain-specific datasets demonstrate that Text-JEPA achieves competitive performance with significantly lower computational overhead compared to larger LLM-based systems. Our findings highlight the potential of structured, interpretable reasoning frameworks for building efficient and explainable QA systems in specialized domains.

Foundations

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