Multinomial logit processes and preference discovery: inside and outside the black box
We provide two characterizations, one axiomatic and the other neuro-computational, of the dependence of choice probabilities on deadlines, within the widely used softmax representation [ p_{t} left(
We provide two characterizations, one axiomatic and the other neuro-computational, of the dependence of choice probabilities on deadlines, within the widely used softmax representation [ p_{t}\left( a,A\right) =\dfrac{e^{\frac{u\left( a\right) }{λ\left( t\right) }+α\left( a\right) }}{\sum_{b\in A}e^{\frac{u\left( b\right) }{λ\left( t\right) }+α\left( b\right) }}% ] where $p_{t}\left( a,A\right) $ is the probability that alternative $a$ is selected from the set $A$ of feasible alternatives if $t$ is the time available to decide, $λ$ is a time dependent noise parameter measuring the unit cost of information, $u$ is a time independent utility function, and $α$ is an alternative-specific bias that determines the initial choice probabilities reflecting prior information and memory anchoring. Our axiomatic analysis provides a behavioral foundation of softmax (also known as Multinomial Logit Model when $α$ is constant). Our neuro-computational derivation provides a biologically inspired algorithm that may explain the emergence of softmax in choice behavior. Jointly, the two approaches provide a thorough understanding of soft-maximization in terms of internal causes (neurophysiological mechanisms) and external effects (testable implications).
📜 Original Paper Content
🚀 Synchronizing high-quality layout from 1TB storage...