Share your thoughts, 1 month free Claude Pro on usSee more
WorkDL logo mark

LogicReward: Incentivizing LLM Reasoning via Step-Wise Logical Supervision

About

Although LLMs exhibit strong reasoning capabilities, existing training methods largely depend on outcome-based feedback, which can produce correct answers with flawed reasoning. Prior work introduces supervision on intermediate steps but still lacks guarantees of logical soundness, which is crucial in high-stakes scenarios where logical consistency is paramount. To address this, we propose LogicReward, a novel reward system that guides model training by enforcing step-level logical correctness with a theorem prover. We further introduce Autoformalization with Soft Unification, which reduces natural language ambiguity and improves formalization quality, enabling more effective use of the theorem prover. An 8B model trained on data constructed with LogicReward surpasses GPT-4o and o4-mini by 11.6\% and 2\% on natural language inference and logical reasoning tasks with simple training procedures. Further analysis shows that LogicReward enhances reasoning faithfulness, improves generalizability to unseen tasks such as math and commonsense reasoning, and provides a reliable reward signal even without ground-truth labels. We will release all data and code at https://llm-symbol.github.io/LogicReward.

Jundong Xu, Hao Fei, Huichi Zhou, Xin Quan, Qijun Huang, Shengqiong Wu, William Yang Wang, Mong-Li Lee, Wynne Hsu• 2025

Related benchmarks

TaskDatasetResultRank
Faithfulness DetectionRAGTruth
Accuracy89.3
10
Faithfulness DetectionFCGPT
Accuracy90.1
10
Faithfulness DetectionFaithCoT-Bench
F1 Score50.4
10
Faithfulness DetectionIn-domain Step-level Benchmark Reasoning
FF180
10
Faithfulness DetectionPROCESSBENCH
F1 Score53.8
10
Faithfulness DetectionStep-level Benchmark In-domain Math
FF172.2
10
Faithfulness DetectionIn-domain Step-level Benchmark Knowledge
FF173.5
10
Faithfulness DetectionIn-domain Step-level Benchmark Agent
FF169.7
10
Showing 8 of 8 rows

Other info

Follow for update