Multialternative Neural Decision Processes

05/03/2020
by   Carlo Baldassi, et al.
0

We introduce an algorithmic decision process for multialternative choice that combines binary comparisons and Markovian exploration. We show that a functional property, transitivity, makes it testable.

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