A Reinforcement Learning Model of Precommitment in Decision Making

Kurth-Nelson, Zeb and Redish, A. David (2010) A Reinforcement Learning Model of Precommitment in Decision Making. Frontiers in Behavioral Neuroscience, 4. ISSN 1662-5153

[thumbnail of pubmed-zip/versions/2/package-entries/fnbeh-04-00184/fnbeh-04-00184.pdf] Text
pubmed-zip/versions/2/package-entries/fnbeh-04-00184/fnbeh-04-00184.pdf - Published Version

Download (2MB)

Abstract

Addiction and many other disorders are linked to impulsivity, where a suboptimal choice is preferred when it is immediately available. One solution to impulsivity is precommitment: constraining one’s future to avoid being offered a suboptimal choice. A form of impulsivity can be measured experimentally by offering a choice between a smaller reward delivered sooner and a larger reward delivered later. Impulsive subjects are more likely to select the smaller-sooner choice; however, when offered an option to precommit, even impulsive subjects can precommit to the larger-later choice. To precommit or not is a decision between two conditions: (A) the original choice (smaller-sooner vs. larger-later), and (B) a new condition with only larger-later available. It has been observed that precommitment appears as a consequence of the preference reversal inherent in non-exponential delay-discounting. Here we show that most models of hyperbolic discounting cannot precommit, but a distributed model of hyperbolic discounting does precommit. Using this model, we find (1) faster discounters may be more or less likely than slow discounters to precommit, depending on the precommitment delay, (2) for a constant smaller-sooner vs. larger-later preference, a higher ratio of larger reward to smaller reward increases the probability of precommitment, and (3) precommitment is highly sensitive to the shape of the discount curve. These predictions imply that manipulations that alter the discount curve, such as diet or context, may qualitatively affect precommitment.

Item Type: Article
Subjects: Digital Open Archives > Biological Science
Depositing User: Unnamed user with email support@digiopenarchives.com
Date Deposited: 22 Mar 2023 06:45
Last Modified: 07 Sep 2024 10:24
URI: http://geographical.openuniversityarchive.com/id/eprint/665

Actions (login required)

View Item
View Item