A Systematic Review of Machine Learning for Assessment and Feedback of Treatment Fidelity

Volume: 30, Issue: 3, Pages: 139 - 153
Published: Jul 1, 2021
Abstract
Many psychological treatments have been shown to be cost-effective and efficacious, as long as they are implemented faithfully. Assessing fidelity and providing feedback is expensive and time-consuming. Machine learning has been used to assess treatment fidelity, but the reliability and generalisability is unclear. We collated and critiqued all implementations of machine learning to assess the verbal behaviour of all helping professionals, with...
Paper Details
Title
A Systematic Review of Machine Learning for Assessment and Feedback of Treatment Fidelity
Published Date
Jul 1, 2021
Volume
30
Issue
3
Pages
139 - 153
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