Abstract
Objective:
The current study sought to clarify and harness the incremental validity of emotional dysregulation and unawareness (EDU) in emerging adulthood, beyond ADHD symptoms and with respect to concurrent classification of impairment and co-occurring problems, using machine learning techniques.
Method:
Participants were 1,539 college students (
Results:
Random forest analyses suggested EDU dimensions significantly improved model performance (
Conclusion:
Results provided support for EDU as a key deficit in those with ADHD that, when present, helps explain ADHD’s co-occurrence with impairment and internalizing problems. Continued application of machine learning techniques may facilitate actuarial classification of ADHD-related outcomes while also incorporating multiple measures.
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