| Literature DB >> 27886981 |
Vaishali Mahalingam1, Michael Palkovics2, Michal Kosinski3, Iva Cek1, David Stillwell1.
Abstract
Delay discounting has been linked to important behavioral, health, and social outcomes, including academic achievement, social functioning and substance use, but thoroughly measuring delay discounting is tedious and time consuming. We develop and consistently validate an efficient and psychometrically sound computer adaptive measure of discounting. First, we develop a binary search-type algorithm to measure discounting using a large international data set of 4,190 participants. Using six independent samples ( N = 1,550), we then present evidence of concurrent validity with two standard measures of discounting and a measure of discounting real rewards, convergent validity with addictive behavior, impulsivity, personality, survival probability; and divergent validity with time perspective, life satisfaction, age and gender. The new measure is considerably shorter than standard questionnaires, includes a range of time delays, can be applied to multiple reward magnitudes, shows excellent concurrent, convergent, divergent, and discriminant validity-by showing more sensitivity to effects of smoking behavior on discounting.Entities:
Keywords: addiction; computer adaptive testing; delay discounting; hierarchical linear modeling/multilevel modeling; item response theory; social network data
Mesh:
Year: 2016 PMID: 27886981 DOI: 10.1177/1073191116680448
Source DB: PubMed Journal: Assessment ISSN: 1073-1911