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arxiv: 2606.23404 · v1 · pith:RIHZ43QHnew · submitted 2026-06-22 · 💻 cs.CL · cs.AI

ReasoningLens: Hierarchical Visualization and Diagnostic Auditing for Large Reasoning Models

classification 💻 cs.CL cs.AI
keywords reasoningreasoninglensauditingdiagnostichierarchicallargemodelstext
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The emergence of Large Reasoning Models has introduced exceptionally long Chain-of-Thought traces, creating a transparency burden where critical logic is often buried under massive procedural text. To address this, we present ReasoningLens, an open-source framework designed for the hierarchical visualization and diagnostic auditing of complex reasoning chains. ReasoningLens addresses information necropsy by: (1) structuring traces into interactive hierarchies that separate high-level strategy from low-level execution; (2) leveraging an agentic auditor for automated error detection and tool-augmented verification; and (3) synthesizing systemic reasoning profiles to reveal model-specific blind spots. By transforming unstructured walls of text into actionable insights, ReasoningLens provides a modular foundation for interpreting, debugging, and optimizing the next generation of reasoning-centric AI.

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