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A Balanced Neuro-Symbolic Approach for Commonsense Abductive Logic

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Although Large Language Models (LLMs) have demonstrated impressive formal reasoning abilities, they often break down when problems require complex proof planning. One promising approach for improving LLM reasoning abilities involves translating problems into formal logic and using a logic solver. Although off-the-shelf logic solvers are in principle substantially more efficient than LLMs at logical reasoning, they assume that all relevant facts are provided in a question and are unable to deal with missing commonsense relations. In this work, we propose a novel method that uses feedback from the logic solver to augment a logic problem with commonsense relations provided by the LLM, in an iterative manner. This involves a search procedure through potential commonsense assumptions to maximize the chance of finding useful facts while keeping cost tractable. On a collection of pure-logical reasoning datasets, from which some commonsense information has been removed, our method consistently achieves considerable improvements over existing techniques, demonstrating the value in balancing neural and symbolic elements when working in human contexts.

Joseph Cotnareanu, Didier Chetelat, Yingxue Zhang, Mark Coates• 2026

Related benchmarks

TaskDatasetResultRank
Commonsense Question AnsweringCosmosQA
Accuracy90
68
Binary ClassificationFOLIO
Accuracy81
18
Binary ClassificationCLUTRR
Accuracy78
18
Binary ClassificationPQA
Accuracy98
18
Binary ClassificationQuail
Accuracy82
18
Binary ClassificationCosmosQA
Accuracy90
18
Binary Classificationesnli
Accuracy98
18
Abductive Logical ReasoningQuail
Accuracy (QUAIL)80
17
Abductive ReasoningFOLIO
Accuracy (FOLIO)80
14
Abductive ReasoningDisamb-QA
Accuracy83
14
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