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The System Hallucination Scale (SHS): A Minimal yet Effective Human-Centered Instrument for Evaluating Hallucination-Related Behavior in Large Language Models

arXiv cs.AI / 3/12/2026

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Key Points

  • The System Hallucination Scale (SHS) is a lightweight, human-centered instrument designed to measure hallucination-related behavior in large language models.
  • SHS is inspired by SUS and SCS and supports rapid, interpretable, domain-agnostic assessment of factors such as factual unreliability, incoherence, misleading presentation, and responsiveness to user guidance in model output.
  • It is explicitly not an automatic hallucination detector or benchmark, but captures how hallucination phenomena manifest from a user perspective during realistic interactions.
  • In a real-world evaluation with 210 participants, SHS demonstrated high clarity and construct validity, with Cronbach's alpha of 0.87 and significant inter-dimension correlations (p<0.001), and showed complementary properties to SUS and SCS for comparative analysis and deployment monitoring.

Abstract

We introduce the System Hallucination Scale (SHS), a lightweight and human-centered measurement instrument for assessing hallucination-related behavior in large language models (LLMs). Inspired by established psychometric tools such as the System Usability Scale (SUS) and the System Causability Scale (SCS), SHS enables rapid, interpretable, and domain-agnostic evaluation of factual unreliability, incoherence, misleading presentation, and responsiveness to user guidance in model-generated text. SHS is explicitly not an automatic hallucination detector or benchmark metric; instead, it captures how hallucination phenomena manifest from a user perspective under realistic interaction conditions. A real-world evaluation with 210 participants demonstrates high clarity, coherent response behavior, and construct validity, supported by statistical analysis including internal consistency (Cronbach's alpha = 0.87) and significant inter-dimension correlations (p < 0.001). Comparative analysis with SUS and SCS reveals complementary measurement properties, supporting SHS as a practical tool for comparative analysis, iterative system development, and deployment monitoring.