LogicBench: Towards Systematic Evaluation of Logical Reasoning Ability of Large Language Models
Mihir Parmar, Nisarg Patel, Neeraj Varshney, Mutsumi Nakamura, Man, Luo, Santosh Mashetty, Arindam Mitra, Chitta Baral

TL;DR
This paper introduces LogicBench, a comprehensive dataset for evaluating the logical reasoning abilities of large language models across various inference patterns, revealing current models' limitations in complex reasoning tasks.
Contribution
The paper presents LogicBench, a new systematic evaluation dataset for logical reasoning in LLMs, covering multiple inference rules and logic types, with extensive analysis of model performance.
Findings
LLMs struggle with complex reasoning and negations.
Models often overlook contextual information in reasoning tasks.
Existing models perform poorly on the LogicBench dataset.
Abstract
Recently developed large language models (LLMs) have been shown to perform remarkably well on a wide range of language understanding tasks. But, can they really "reason" over the natural language? This question has been receiving significant research attention and many reasoning skills such as commonsense, numerical, and qualitative have been studied. However, the crucial skill pertaining to 'logical reasoning' has remained underexplored. Existing work investigating this reasoning ability of LLMs has focused only on a couple of inference rules (such as modus ponens and modus tollens) of propositional and first-order logic. Addressing the above limitation, we comprehensively evaluate the logical reasoning ability of LLMs on 25 different reasoning patterns spanning over propositional, first-order, and non-monotonic logics. To enable systematic evaluation, we introduce LogicBench, a…
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Taxonomy
TopicsSemantic Web and Ontologies · Natural Language Processing Techniques · Topic Modeling
MethodsAttention Is All You Need · Position-Wise Feed-Forward Layer · Byte Pair Encoding · Absolute Position Encodings · Dropout · Dense Connections · Label Smoothing · Residual Connection · Softmax · Adam
