| Literature DB >> 25914613 |
Steven T Piantadosi1, Benjamin Y Hayden2.
Abstract
Economists often model choices as if decision-makers assign each option a scalar value variable, known as utility, and then select the option with the highest utility. It remains unclear whether as-if utility models describe real mental and neural steps in choice. Although choices alone cannot prove the existence of a utility stage, utility transformations are often taken to provide the most parsimonious or psychologically plausible explanation for choice data. Here, we show that it is possible to mathematically transform a large set of common utility-stage two-option choice models (specifically ones in which dimensions are can be decomposed into additive functions) into a heuristic model (specifically, a dimensional prioritization heuristic) that has no utility computation stage. We then show that under a range of plausible assumptions, both classes of model predict similar neural responses. These results highlight the difficulties in using neuroeconomic data to infer the existence of a value stage in choice.Entities:
Keywords: decision making; dimensional prioritization; heuristics; utility; value comparison; value correlate
Year: 2015 PMID: 25914613 PMCID: PMC4391032 DOI: 10.3389/fnins.2015.00105
Source DB: PubMed Journal: Front Neurosci ISSN: 1662-453X Impact factor: 4.677
Figure 1(A) This density plot shows the difference in the dimension chosen by the dimensional prioritization algorithm (x-axis) vs. the value of P1 (y-axis) in a simple simulation. The strong correlation (R = 0.45) indicates that a neural representation of the key comparison in step 4 of Algorithm 2 can appear erroneously to be representing the probability of choice 1, or other variables (see text). (B) The correlation between the difference in the dimension chosen by the dimensional prioritization algorithm (x-axis) and the difference in expected value (y-axis). The correlation (R = 0.83) here demonstrates that a neural representation of step 4 in Algorithm 2 can also appear erroneously to be representing the difference in expected value.
(Utility algorithm).
(Utility-free dimensional prioritization algorithm).