Probabilistic choice (models) as a result of balancing multiple goals |
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Authors: | Joffre Swait A.A.J. Marley |
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Affiliation: | 1. Centre for the Study of Choice (CenSoC), UTS Business School, University of Technology Sydney, Level 4/645 Harris Street, Ultimo, NSW 2007, Australia;2. Department of Psychology, University of Victoria, Victoria, BC V8W 3P5, Canada |
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Abstract: | We conceptualize probabilistic choice as the result of the simultaneous pursuit of multiple goals in a vector optimization representation, which is reduced to a scalar optimization that implies goal balancing. The majority of prior theoretical and empirical work on such probabilistic choice is based on random utility models, the most basic of which assume that each choice option has a valuation that has a deterministic (systematic) component plus a random component determined by some specified distribution. An alternate approach to probabilistic choice has considered maximization of one quantity (e.g., utility), subject to constraints on one or more other quantities (e.g., cost). The multiple goal perspective integrates the results regarding the well-studied multinomial logit model of probabilistic choice that has been derived from each of the above approaches; extends the results to other models in the generalized extreme value (GEV) class; and relates them to recent axiomatic work on the utility of gambling. |
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Keywords: | Goals Probabilistic choice Random utility models Constrained maximization Entropy Utility of gambling |
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