Analysis of Risk Factors and Symptoms of Burnout Syndrome in Colombian School Teachers under Statutes 2277 and 1278 Using Machine Learning Interpretation
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Hugo F. Posada-Quintero | R. M. Parra-Hernández | Jorge I Posada-Quintero | Paula N. Molano-Vergara | Ronald M. Parra-Hernández | Jorge I. Posada-Quintero
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