From Dispersion to Attraction: Spectral Dynamics of Hallucination Across Whisper Model Scales
Abstract
Hallucinations in large ASR models present a critical safety risk. In this work, we propose the Spectral Sensitivity Theorem, which predicts a phase transition in deep networks from a dispersive regime (signal decay) to an attractor regime (rank-1 collapse) governed by layer-wise gain and alignment. We validate this theory by analyzing the eigenspectra of activation graphs in Whisper models (Tiny to Large-v3-Turbo) under adversarial stress. Our results confirm the theoretical prediction: intermediate models exhibit Structural Disintegration (Regime I), characterized by a 13.4\% collapse in Cross-Attention rank. Conversely, large models enter a Compression-Seeking Attractor state (Regime II), where Self-Attention actively compresses rank (-2.34\%) and hardens the spectral slope, decoupling the model from acoustic evidence.
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