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arxiv: 2506.15455 · v1 · pith:TPYHH5VB · submitted 2025-06-18 · cs.CL · cs.AI

RE-IMAGINE: Symbolic Benchmark Synthesis for Reasoning Evaluation

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classification cs.CL cs.AI
keywords reasoningframeworkhierarchyllmsre-imagineacrossbenchmarkslevels
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Recent Large Language Models (LLMs) have reported high accuracy on reasoning benchmarks. However, it is still unclear whether the observed results arise from true reasoning or from statistical recall of the training set. Inspired by the ladder of causation (Pearl, 2009) and its three levels (associations, interventions and counterfactuals), this paper introduces RE-IMAGINE, a framework to characterize a hierarchy of reasoning ability in LLMs, alongside an automated pipeline to generate problem variations at different levels of the hierarchy. By altering problems in an intermediate symbolic representation, RE-IMAGINE generates arbitrarily many problems that are not solvable using memorization alone. Moreover, the framework is general and can work across reasoning domains, including math, code, and logic. We demonstrate our framework on four widely-used benchmarks to evaluate several families of LLMs, and observe reductions in performance when the models are queried with problem variations. These assessments indicate a degree of reliance on statistical recall for past performance, and open the door to further research targeting skills across the reasoning hierarchy.

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Cited by 1 Pith paper

Reviewed papers in the Pith corpus that reference this work. Sorted by Pith novelty score.

  1. CauSim: Scaling Causal Reasoning with Increasingly Complex Causal Simulators

    cs.AI 2026-05 unverdicted novelty 6.0

    CauSim turns scarce causal reasoning labels into scalable supervised data by having LLMs incrementally construct complex executable structural causal models.