Machine individuality: Separating genuine idiosyncrasy from response bias in large language models

arXiv cs.AI / 4/21/2026

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Key Points

  • The study examines whether differences in large language model behavior reflect true, stimulus-specific individuality or instead come from global response bias and random noise.
  • Using crossed random-effects models on 74.9 million ratings from 10 open-weight LLMs across 100,000+ words and 14 psycholinguistic norms, the authors estimate that 16.9% of the variance comes from stimulus-specific individuality.
  • The individuality signal is robustly above a statistical null model, indicating it is not merely an artifact of measurement noise.
  • Cross-norm prediction shows that this individuality forms a coherent “fingerprint” that is unique to each model.
  • The paper introduces the term “machine individuality” to describe individual-difference patterns among LLMs that cannot be explained by response bias or stochastic variation.

Abstract

As large language models (LLMs) are increasingly integrated into daily life, in roles ranging from high-stakes decision support to companionship, understanding their behavioral dispositions becomes critical. A growing literature uses psychometric inventories and cognitive paradigms to profile LLM dispositions. However, these approaches cannot determine whether behavioral differences reflect stable, stimulus-specific individuality or global response biases and stochastic noise. Here, we apply crossed random-effects models -- widely used in psychometrics to separate systematic effects -- to 74.9 million ratings provided by 10 open-weight LLMs for over 100,000 words across 14 psycholinguistic norms. On average, 16.9% of variance is attributable to stimulus-specific individuality, robustly exceeding a statistical null model. Cross-norm prediction analyses reveal this individuality as a coherent fingerprint, unique to each model. These results identify individual differences among LLMs that cannot be attributed to response biases or stochastic noise. We term these differences machine individuality.