Learning asymmetry as a predictor of mood and behavior dynamics: A network analysis

Laurens T. Kemp*, Tom Smeets, Anita Jansen, Katrijn Houben

*Corresponding author for this work

Research output: Contribution to journalArticleScientificpeer-review

Abstract

While studying appetitive and aversive conditioning is common in psychopathology research, studies that measure both types of learning simultaneously are rare. To gain insight into the role of appetitive and aversive learning in the complex interaction of positive mood, negative mood, worry, craving, avoidance and impulsive behavior, this study used a relative measure of the strength of appetitive versus aversive learning – the learning asymmetry – as a predictor of network dynamics of mood states and behavior. 100 healthy volunteers performed an appetitive and aversive conditioning task and completed an ecological momentary assessment study, where they were surveyed six times per day for 21 days. Groups were defined based on higher sensitivity to appetitive learning (positive learning asymmetry) or aversive learning (negative learning asymmetry). The positive asymmetry group was hypothesized to be more sensitive to positive mood changes, and the negative asymmetry group was hypothesized to be more sensitive to negative mood changes. Contrary to our hypothesis, results show that impulsive behavior was more likely to follow negative mood, specifically anger, in the positive but not the negative asymmetry group. These results demonstrate the potential for network analysis to elucidate complex interactions between mood and behavior associated with individual differences in learning.
Original languageEnglish
Article number102071
Number of pages10
JournalJournal of Behavior Therapy and Experimental Psychiatry
Volume90
Early online dateOct 2025
DOIs
Publication statusE-pub ahead of print - Oct 2025

Keywords

  • associative learning
  • appetitive conditioning
  • aversive conditioning
  • impulsivity
  • avoidance
  • network analysis

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