Human-like individual differences emerge from random weight initializations in neural networks

Published: 23 Sept 2025, Last Modified: 06 Dec 2025DBM 2025 Findings PosterEveryoneRevisionsBibTeXCC BY 4.0
Abstract: Much of AI research targets the behavior of an *average* human, a focus that traces to Turing's imitation game. Yet, no two human individuals behave exactly alike. In this study, we show that artificial neural networks (ANNs) trained with different random initializations exhibit substantial individual differences that resemble those in humans. Using a large dataset (N = 60) of human responses (accuracy, confidence, & response time) in a digit recognition task, we trained multiple instances of three ANN architectures on the same task, creating as many ANN instances as human subjects. We found that these ANN instances vary significantly from one another. Critically, ANN instances showed consistent variation in their alignment with specific human subjects. This consistency in alignment between ANN instances and humans extended across behavioral metrics, indicating that an ANN instance mimicking an individual on one metric also does so on others. Finally, we showed that leveraging these alignments improves predictions of individual human responses. Our findings highlight the potential of ANNs to capture human variability, opening new directions to develop models that go beyond aligning the *average* human and instead aligning the idiosyncratic behavior of specific *individuals*.
Length: short paper (up to 4 pages)
Domain: methods
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Submission Number: 8
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