| Literature DB >> 28827699 |
Peter N C Mohr1,2,3, Hauke R Heekeren4,5, Jörg Rieskamp6.
Abstract
Individuals make decisions under risk throughout daily life. Standard models of economic decision making typically assume that people evaluate choice options independently. There is, however, substantial evidence showing that this independence assumption is frequently violated in decision making without risk. The present study extends these findings to the domain of decision making under risk. To explain the independence violations, we adapted a sequential sampling model, namely Multialternative Decision Field Theory (MDFT), to decision making under risk and showed how this model can account for the observed preference shifts. MDFT not only better predicts choices compared with the standard Expected Utility Theory, but it also explains individual differences in the size of the observed context effect. Evidence in favor of the chosen option, as predicted by MDFT, was positively correlated with brain activity in the medial orbitofrontal cortex (mOFC) and negatively correlated with brain activity in the anterior insula (aINS). From a neuroscience perspective, the results of the present study show that specific brain regions, such as the mOFC and aINS, not only code the value or risk of a single choice option but also code the evidence in favor of the best option compared with other available choice options.Entities:
Mesh:
Year: 2017 PMID: 28827699 PMCID: PMC5567099 DOI: 10.1038/s41598-017-06968-5
Source DB: PubMed Journal: Sci Rep ISSN: 2045-2322 Impact factor: 4.379
Figure 1Task. (A) Subjects performed a series of choices between two or three risky gain-versus-nothing gambles and had 7 s to make their choice. (B) Choices were separated in three with-subject conditions, (I) the Baseline Condition, (II) the Decoy Condition, and (III) the Filler Condition. In (I) the Baseline Condition subjects made choices between two all-or-nothing gambles, one with a high probability to win a small amount of money (Target) and one with a low probability to win a high amount of money (Competitor). In (II) the Decoy Condition one option was added to the choice set compared to the Baseline condition. This additional option (Decoy) was similar to the option with a high probability to win a small amount of money, but the probability was exactly 10 percentage points lower to win the same small amount of money. In the (III) Filler Condition also one option (Filler) was added to the choice sets of the Basic Condition. The option, however, offered the same small win that was offered in one option but only with the low probability of the other option.
Figure 2Behavioral Results. (A) Subjects chose the Target significantly more often in the Decoy Condition compared to the Baseline Condition or the Filler Condition. There was no significant difference in choice propensity between the Baseline and the Filler Condition. (B) In a model comparison, MDFT was better able to explain observed choices compared to EUT and a simple Chance Model, indicated by lower AIC scores. (C) Individual differences in the observed size of the AE were strongly correlated (r = 0.64) with individual differences in the size of the AE predicted by MDFT.
Figure 3FMRI Results. (A) Brain activity in the aINS was significantly higher (z > 3.1, cluster size > 50, displayed in red) during decision making in the decoy condition compared to the filler condition. (B) Evidence in favor of the chosen option, operationalized as choice probability predicted by MDFT, showed a positive correlation (z > 3.1, cluster p < 0.05, displayed in red) with brain activity in mOFT/VMPFC and PCC and a negative correlation (z > 3.1, cluster p < 0.05, displayed in blue) with brain activity in bilateral aINS, bilateral DLPFC, and DMPFC. (C) In MDFT, the subjective distance between two alternatives is determined by the distance in the indifference direction and the distance in the dominance direction. Importantly, a specific parameter, namely the relative distance weighting parameter, allows for an overweighting of the distance in the dominance direction, leading to an increase in the subjective distance for dominated alternatives and a decrease in the AE. In the displayed example the subjective location of Option C would thus move to C’ or C” with an increasing relative distance weighting parameter. (D) Individual differences in the relative distance weighting parameter were related to neural representations of evidence in favor of the chosen option in PCC (z > 3.1, cluster p < 0.1, displayed in green). A decrease in the relative distance weighting led to decreased brain activity in the PCC.