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Latent structure in random sequences drives neural learning toward a rational bias.


ABSTRACT: People generally fail to produce random sequences by overusing alternating patterns and avoiding repeating ones-the gambler's fallacy bias. We can explain the neural basis of this bias in terms of a biologically motivated neural model that learns from errors in predicting what will happen next. Through mere exposure to random sequences over time, the model naturally develops a representation that is biased toward alternation, because of its sensitivity to some surprisingly rich statistical structure that emerges in these random sequences. Furthermore, the model directly produces the best-fitting bias-gain parameter for an existing Bayesian model, by which we obtain an accurate fit to the human data in random sequence production. These results show that our seemingly irrational, biased view of randomness can be understood instead as the perfectly reasonable response of an effective learning mechanism to subtle statistical structure embedded in random sequences.

SUBMITTER: Sun Y 

PROVIDER: S-EPMC4378445 | biostudies-literature | 2015 Mar

REPOSITORIES: biostudies-literature

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Latent structure in random sequences drives neural learning toward a rational bias.

Sun Yanlong Y   O'Reilly Randall C RC   Bhattacharyya Rajan R   Smith Jack W JW   Liu Xun X   Wang Hongbin H  

Proceedings of the National Academy of Sciences of the United States of America 20150309 12


People generally fail to produce random sequences by overusing alternating patterns and avoiding repeating ones-the gambler's fallacy bias. We can explain the neural basis of this bias in terms of a biologically motivated neural model that learns from errors in predicting what will happen next. Through mere exposure to random sequences over time, the model naturally develops a representation that is biased toward alternation, because of its sensitivity to some surprisingly rich statistical struc  ...[more]

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