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Retromorphic Testing Framework (RTF) for detecting hallucinations in Large Language Models (LLMs)

Project description

RTFactCheck / RT4Hallucination

Using RT (retrieval trajectories) for detecting hallucination.

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For detailed usage and architecture, see:

  • docs/index.md – library usage guide and Quick Start;
  • docs/architecture.md – package structure and core modules.

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