2021
DOI: 10.3390/ijerph181910048
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Forecasting the Suitability of Online Mental Health Information for Effective Self-Care Developing Machine Learning Classifiers Using Natural Language Features

Abstract: Background: Online mental health information represents important resources for people living with mental health issues. Suitability of mental health information for effective self-care remains understudied, despite the increasing needs for more actionable mental health resources, especially among young people. Objective: We aimed to develop Bayesian machine learning classifiers as data-based decision aids for the assessment of the actionability of credible mental health information for people with mental heal… Show more

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Cited by 2 publications
(1 citation statement)
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“…Online mental health information is a valuable resource for people dealing with mental health concerns, as [26] developed machine learning for forecasting the suitability of online mental health information for effective self-care for people dealing with mental health concerns. Bayesian machine learning classifiers were developed as data-based decision aids for assessing the actionability of credible mental health information for people with mental health difficulties and diseases.…”
Section: Online Learning Solution To Assist Mental Health Care Learnersmentioning
confidence: 99%
“…Online mental health information is a valuable resource for people dealing with mental health concerns, as [26] developed machine learning for forecasting the suitability of online mental health information for effective self-care for people dealing with mental health concerns. Bayesian machine learning classifiers were developed as data-based decision aids for assessing the actionability of credible mental health information for people with mental health difficulties and diseases.…”
Section: Online Learning Solution To Assist Mental Health Care Learnersmentioning
confidence: 99%