From Natural Language to Executable Narsese: A Neuro-Symbolic Benchmark and Pipeline for Reasoning with NARS
arXiv cs.AI / 4/22/2026
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Key Points
- The paper proposes a neuro-symbolic approach that converts natural-language reasoning questions into executable formal representations using first-order logic (FOL) and Narsese (NARS).
- It introduces the NARS-Reasoning-v0.1 benchmark, pairing natural-language problems with FOL forms, executable Narsese programs, and three gold labels (True, False, Uncertain).
- The authors build a deterministic compilation pipeline from FOL to executable Narsese and validate alignment by running the compiled programs in OpenNARS for Applications (ONA).
- They also introduce Language-Structured Perception (LSP), training an LLM to output reasoning-relevant symbolic structure (not just a final answer), and demonstrate proof-of-concept supervised adaptation by releasing a Phi-2 LoRA adapter for three-label classification.
- Overall, the work argues that execution-based validation of generated symbolic programs can improve reliability and interpretability for multi-step, structured reasoning beyond what pure LLM text generation can provide.
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