Validação de um modelo de traços de personalidade positivos e negativoscomo preditores do bem-estar psicológico aplicando algoritmos de machine learning

Autores

DOI:

https://doi.org/10.22235/cp.v18i1.3286

Palavras-chave:

traços positivos, traços negativos, personalidade, bem-estar psicológico, algoritmos

Resumo

O objetivo do estudo foi verificar um modelo preditivo de traços de personalidade positivos e negativos tendo como critério o bem-estar psicológico por meio da implementação de algoritmos de machine learning. Participaram 2.038 sujeitos adultos (51,9 % mulheres). Para a coleta de dados foram utilizados: Big Five Inventory e Mental Health Continuum-Short Form. Além disso, para avaliar os traços de personalidade positivos e negativos, foram utilizados conjuntamente os itens já validados dos modelos de traços positivos (HFM) e negativos (BAM). Foi possível verificar que a eficácia preditiva do modelo testado de traços positivos e negativos derivados de uma abordagem lexical foi superior à capacidade preditiva de traços normais de personalidade para a predição do bem-estar.

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Biografias Autor

Alejandro Castro Solano, Universidad de Buenos Aires; Universidad de Palermo; Conicet

Doctor en Psicología. Investigador Principal del Consejo Nacional de Investigaciones Científicas y Técnicas (CONICET, Argentina). Profesor Adjunto Regular de la Facultad de Psicología, Universidad de Buenos Aires. Director del Doctorado de la Universidad de Palermo. Dirección: Mario Bravo 1259 (C1175ABW), Buenos Aires, Argentina, Teléfono: +54 11 51994500 (int. 1311). e-mail:  alejandro.castrosolano@gmail.com. ORCID ID: https://orcid.org/0000-0002-4639-3706

Micaela Ailén Caporiccio Trillo , Universidad de Buenos Aires

Licenciada en Psicología, Facultad de Psicología, Universidad de Buenos Aires. Becaria Consejo Interuniversitario Nacional (CIN). Av. Independencia 3065, CABA, Argentina. e-mail: micatrillo5@gmail.com

Alejandro César Cosentino, Universidad de Buenos Aires; Universidad de Palermo

Doctor en Psicología. Profesor e Investigador, Universidad de Palermo y Universidad de Buenos Aires, Argentina. e-mail: acosentino@outlook.com.  ORCID ID: http://orcid.org/0000-0002-7786-5470

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Publicado

2024-05-17

Como Citar

Castro Solano, A., Lupano Perugini, M. L., Caporiccio Trillo , M. A., & Cosentino, A. C. (2024). Validação de um modelo de traços de personalidade positivos e negativoscomo preditores do bem-estar psicológico aplicando algoritmos de machine learning. Ciencias Psicológicas, 18(1), e-3286. https://doi.org/10.22235/cp.v18i1.3286

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