Rethinking Reasoning in LLMs: Neuro-Symbolic Local RetoMaton Beyond ICL and CoT
Rushitha Santhoshi Mamidala, Anshuman Chhabra, Ankur Mali

TL;DR
This paper introduces a local, automaton-based memory extension for large language models that enhances reasoning robustness, transparency, and domain transferability compared to traditional prompting methods.
Contribution
It extends the RetoMaton neuro-symbolic framework by replacing its global datastore with a task-adaptive Weighted Finite Automaton, improving retrieval stability and interpretability.
Findings
Improved reasoning accuracy across multiple tasks.
Enhanced transparency and reproducibility in retrieval.
Better domain transfer capabilities.
Abstract
Prompt-based reasoning strategies such as Chain-of-Thought (CoT) and In-Context Learning (ICL) have become widely used for eliciting reasoning capabilities in large language models (LLMs). However, these methods rely on fragile, implicit mechanisms often yielding inconsistent outputs across seeds, formats, or minor prompt variations making them fundamentally unreliable for tasks requiring stable, interpretable reasoning. In contrast, automata-based neuro-symbolic frameworks like RetoMaton offer a more structured and trustworthy alternative by grounding retrieval in symbolic memory with deterministic transitions. In this work, we extend RetoMaton by replacing its global datastore with a local, task-adaptive Weighted Finite Automaton (WFA), constructed directly from external domain corpora. This local automaton structure promotes robust, context-aware retrieval while preserving symbolic…
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