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.
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