logo
Loading...
Distinguishing deception from its confounds by improving the validity of fMRI-based neural prediction

Psychology

Distinguishing deception from its confounds by improving the validity of fMRI-based neural prediction

S. Lee, R. Niu, et al.

Research conducted by Sangil Lee, Runxuan Niu, Lusha Zhu, Andrew S. Kayser, and Ming Hsu applies machine learning and fMRI to signaling games to reassess how the brain supports deception. The study reveals that many neural predictors capture confounding processes, and introduces a "dual-goal tuning" method that removes confounds while preserving deception-related signals—offering a firmer foundation for neural studies of lying.... show more
Abstract
Deception is a universal human behavior. Yet longstanding skepticism about the validity of measures used to characterize the biological mechanisms underlying deceptive behavior has relegated such studies to the scientific periphery. Here, we address these fundamental questions by applying machine learning methods and functional magnetic resonance imaging (fMRI) to signaling games capturing motivated deception in human participants. First, we develop an approach to test for the presence of confounding processes and validate past skepticism by showing that much of the predictive power of neural predictors trained on deception data comes from processes other than deception. Specifically, we demonstrate that discriminant validity is compromised by the predictor's ability to predict behavior in a control task that does not involve deception. Second, we show that the presence of confounding signals need not be fatal and that the validity of the neural predictor can be improved by removing confounding signals while retaining those associated with the task of interest. To this end, we develop a "dual-goal tuning" approach in which, beyond the typical goal of predicting the behavior of interest, the predictor also incorporates a second compulsory goal that enforces chance performance in the control task. Together, these findings provide a firmer scientific foundation for understanding the neural basis of a neglected class of behavior, and they suggest an approach for improving validity of neural predictors.
Publisher
PNAS
Published On
Dec 06, 2024
Authors
Sangil Lee, Runxuan Niu, Lusha Zhu, Andrew S. Kayser, Ming Hsu
Tags
Deception
fMRI
Machine learning
Confounding signals
Discriminant validity
Dual-goal tuning
Signaling games
Listen, Learn & Level Up
Over 10,000 hours of research content in 25+ fields, available in 22+ languages.
No more digging through PDFs, just hit play and absorb the world's latest research in your language, on your time.
listen to research audio papers with researchbunny
    Distinguishing deception from its confounds by | ResearchBunny