<p><a></a><a>Measurement
of the determinants of socially undesirable behaviors, such as dishonesty, are
complicated and obscured by social desirability biases. To circumvent these
biases, we used </a>connectome-based
predictive modelling (CPM) on resting state functional connectivity
patterns in combination with a novel task which inconspicuously measures voluntary cheating to
gain access to the neurocognitive determinants of (dis)honesty. Specifically, we
investigated whether task-independent neural patterns within the brain at rest
could be used to predict a propensity for (dis)honest behaviour. Our
analyses revealed that functional connectivity, especially between brain
networks linked to self-referential thinking (vmPFC, temporal poles, and PCC)
and reward processing (caudate nucleus), reliably correlates, in an independent
sample, with participants’ propensity to cheat. Participants who cheated the
most also scored highest on several self-report measures of impulsivity which underscores
the generalizability of our results. Notably, when comparing neural and self-report measures, the neural measures
were found to be more important in predicting cheating propensity. </p><p><br></p><p>In this repository you can find the data and scripts used in the study. For detailed information please consult the README file.<br></p>