4.2 Article

Toward the nature of automatic associations: item-level computational semantic similarity and IAT-based alcohol-valence associations

Journal

ADDICTION RESEARCH & THEORY
Volume 31, Issue 2, Pages 100-105

Publisher

TAYLOR & FRANCIS LTD
DOI: 10.1080/16066359.2022.2123474

Keywords

IAT; machine learning; item-level; word2vec; alcohol-valence; automatic associations

Ask authors/readers for more resources

This study tested the systematic covariation between model-based and behavior-based alcohol-related associations and found a significant covariance between items' computational and behavioral measures of association over participants. These results provide methodological strategies, connect computational linguistics and social-cognitive psychology, and offer a theoretical link between measures of alcohol-related associations and alcohol-related cognition and behaviors.
Automatic associations involving alcohol have been proposed to play a role in drinking behavior. Such associations are often assessed using implicit measures such as the Implicit Association Test (IAT). Neural network language models provide computational measures of semantic relationships between words. These model-based measures could be related to behavioral alcohol-related associations as observed using the IAT. If so, this could provide a step toward better understanding of the nature of automatic associations and their relationship to behavior. The current study therefore aimed to test whether there is a systematic covariation over items between model-based and behavior-based associations. Analyses were performed for two single-target IATs from a previously published study. One task involved alcohol versus nonalcohol drinks and positive associates, and the other alcohol versus nonalcohol drinks and negative associates. The GenSim library and a pretrained word2vec model were used to calculate a relative computational association between specific items from the positive and negative categories, respectively, and the alcohol versus nonalcohol word sets. In both tasks, a significant covariance between items' computational and behavioral measures of association was found over participants. The results thus add to the information on the relationship between neural network language models and psychological associations. They may provide methodological strategies for task design and data analysis. Models of semantic associations connect computational linguistics and social-cognitive psychology and may provide a theoretical link between measures of alcohol-related associations using verbal stimuli and alcohol-related cognition and behaviors.

Authors

I am an author on this paper
Click your name to claim this paper and add it to your profile.

Reviews

Primary Rating

4.2
Not enough ratings

Secondary Ratings

Novelty
-
Significance
-
Scientific rigor
-
Rate this paper

Recommended

No Data Available
No Data Available