TL;DR
Pramana introduces a fine-tuning approach for large language models using Navya-Nyaya logic, enhancing their ability to perform structured epistemic reasoning and grounding claims in traceable evidence.
Contribution
This work is the first to incorporate ancient Indian logical frameworks into LLM fine-tuning for improved epistemic reasoning and explainability.
Findings
Models achieved 100% semantic correctness on evaluation tasks.
Fine-tuning on Navya-Nyaya logic improves reasoning structure adherence.
Model performance is sensitive to prompting format and temperature settings.
Abstract
Large language models produce fluent text but struggle with systematic reasoning, often hallucinating confident but unfounded claims. When Apple researchers added irrelevant context to mathematical problems, LLM performance degraded by 65% Apple Machine Learning Research, exposing brittle pattern-matching beneath apparent reasoning. This epistemic gap, the inability to ground claims in traceable evidence, limits AI reliability in domains requiring justification. We introduce Pramana, a novel approach that teaches LLMs explicit epistemological methodology by fine-tuning on Navya-Nyaya logic, a 2,500-year-old Indian reasoning framework. Unlike generic chain-of-thought prompting, Navya-Nyaya enforces structured 6-phase reasoning: SAMSHAYA (doubt analysis), PRAMANA (evidence source identification), PANCHA AVAYAVA (5-member syllogism with universal rules), TARKA (counterfactual…
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