A proof-of-concept study applying machine learning methods to putative risk factors for eating disorders: results from the multi-centre European project on healthy eating.
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Abstract | :
Despite a wide range of proposed risk factors and theoretical models, prediction of eating disorder (ED) onset remains poor. This study undertook the first comparison of two machine learning (ML) approaches [penalised logistic regression (LASSO), and prediction rule ensembles (PREs)] to conventional logistic regression (LR) models to enhance prediction of ED onset and differential ED diagnoses from a range of putative risk factors. |
Year of Publication | :
2021
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Journal | :
Psychological medicine
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Number of Pages | :
1-10
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Date Published | :
2021
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ISSN Number | :
0033-2917
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URL | :
https://www.cambridge.org/core/product/identifier/S003329172100489X/type/journal_article
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DOI | :
10.1017/S003329172100489X
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Short Title | :
Psychol Med
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