RT Journal Article SR Electronic T1 Asymmetric learning facilitates human inference of transitive relations JF bioRxiv FD Cold Spring Harbor Laboratory SP 2021.04.03.437766 DO 10.1101/2021.04.03.437766 A1 Simon Ciranka A1 Juan Linde-Domingo A1 Ivan Padezhki A1 Clara Wicharz A1 Charley M. Wu A1 Bernhard Spitzer YR 2021 UL http://biorxiv.org/content/early/2021/07/26/2021.04.03.437766.abstract AB Humans and other animals are capable of inferring never-experienced relations (e.g., A>C) from other relational observations (e.g., A>B and B>C). The processes behind such transitive inference are subject to intense research. Here, we demonstrate a new aspect of relational learning, building on previous evidence that transitive inference can be accomplished through simple reinforcement learning mechanisms. We show in simulations that inference of novel relations benefits from an asymmetric learning policy, where observers update only their belief about the winner (or loser) in a pair. Across 4 experiments (n=145), we find substantial empirical support for such asymmetries in inferential learning. The learning policy favoured by our simulations and experiments gives rise to a compression of values which is routinely observed in psychophysics and behavioural economics. In other words, a seemingly biased learning strategy that yields well-known cognitive distortions can be beneficial for transitive inferential judgments.Competing Interest StatementThe authors have declared no competing interest.