OSCAR: Orchestrated Self-verification and Cross-path Refinement
Yash Shah, Abhijit Chakraborty, Naresh Kumar Devulapally, Vishnu Lokhande, Vivek Gupta

TL;DR
OSCAR is a training-free, inference-time framework for diffusion language models that detects and corrects hallucinations by analyzing denoising trajectories and uncertainty signals.
Contribution
It introduces a novel uncertainty localization method and a suite of trajectory assessments, enabling effective hallucination mitigation without additional training.
Findings
OSCAR reduces hallucinated content across multiple datasets.
Uncertainty-based remasking improves factual accuracy.
Native entropy signals outperform trained hallucination detectors.
Abstract
Diffusion language models (DLMs) expose their denoising trajectories, offering a natural handle for inference-time control; accordingly, an ideal hallucination mitigation framework should intervene during generation using this model-native signal rather than relying on an externally trained hallucination classifier. Toward this, we formulate commitment uncertainty localization: given a denoising trajectory, identify token positions whose cross-chain entropy exceeds an unsupervised threshold before factually unreliable commitments propagate into self-consistent but incorrect outputs. We introduce a suite of trajectory-level assessments, including a cross-chain divergence-at-hallucination (CDH) metric, for principled comparison of localization methods. We also introduce OSCAR, a training-free inference-time framework operationalizing this formulation. OSCAR runs N parallel denoising…
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