Tethered Reasoning: Decoupling Entropy from Hallucination in Quantized LLMs via Manifold Steering
Craig Atkinson

TL;DR
HELIX introduces a geometric framework that decouples entropy from hallucination in quantized LLMs by tethering hidden states to a truthfulness manifold, enabling high-temperature diversity without semantic incoherence.
Contribution
The paper presents HELIX, a novel manifold steering method that maintains semantic coherence at high temperatures by controlling trajectory divergence in quantized language models.
Findings
Maintains high accuracy at T=3.0 with minimal degradation.
Increases semantic diversity and idea generation at high temperatures.
Validates architecture-independence of the tethering approach.
Abstract
Quantized language models face a fundamental dilemma: low sampling temperatures yield repetitive, mode-collapsed outputs, while high temperatures (T > 2.0) cause trajectory divergence and semantic incoherence. We present HELIX, a geometric framework that decouples output entropy from hallucination by tethering hidden-state trajectories to a pre-computed truthfulness manifold. HELIX computes a Unified Truth Score (UTS) combining token-level semantic entropy with Mahalanobis distance from the manifold. When UTS indicates trajectory divergence, graduated steering vectors redirect activations toward structurally coherent regions while affecting only 0.2-2.5% of tokens. On 4-bit quantized Granite 4.0 H Small (32B/9B active, hybrid Mamba-Transformer): GSM8K maintains 88.84% accuracy at T = 3.0 (2.81pp degradation from T = 0.5); MMLU maintains 72.49% across 14,042 questions (1.24pp…
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Taxonomy
TopicsNatural Language Processing Techniques · Topic Modeling · Generative Adversarial Networks and Image Synthesis
