Published
2017-05-16

Una función de calibración construida a partir de puntos de cambio: revisión

Una función de Calibración construida a partir de puntos de cambio: Revisión

DOI: https://doi.org/10.15332/s2027-3355.2017.0001.06
Ehidy Karime García http://orcid.org/0000-0003-0034-7162
Juan Carlos Correa
Juan Carlos Salazar

Abstract (en)

El problema de calibración no es reciente. Los trabajos en este tema fueron presentados inicialmente por Krutchkoff en la epoca de los 60's bajo un enfoque paramétrico y han sido ampliamente estudiados por otros autores desde diferentes enfoques. Las recientes investigaciones respecto al punto de cambio, han considerado supuestos adicionales y estimación usando modelos lineales mixtos. Se presenta una revisión exhaustiva de estos dos problemas y se puede observar que la vinculacion de estos no ha sido trabajado.

 

 

Keywords (en): Calibración, modelos mixtos, punto de cambio.

Abstract (es)

El problema de calibración no es reciente. Los trabajos en este tema fueron presentados inicialmente por Krutchkoff en la época de los 60, bajo un enfoque paramétrico y han sido ampliamente estudiados por otros autores desde diferentes perspectivas. Las investigaciones recientes respecto al punto de cambio han considerado supuestos adicionales y estimación usando modelos lineales mixtos. Se presenta una revisión exhaustiva de los problemas de calibración y punto de cambio. Adicionalmente, se puede observar que la vinculación de estos bajo el enfoque de modelos para datos longitudnales no ha sido trabajado.

Keywords (es): Calibration, linear mixed models, change point.
Ehidy Karime García, Universidad Nacional de Colombia. Sede Medellín.

Doctora (C) en Estadística. Universidad Nacional de Colombia. Sede Medellín.

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How to Cite

García, E. K., Correa, J. C., & Salazar, J. C. (2017). Una función de Calibración construida a partir de puntos de cambio: Revisión. Comunicaciones En Estadística, 10(1), 113-128. https://doi.org/10.15332/s2027-3355.2017.0001.06