Autor:
Comuzzi, Marco

Cargando...
Foto de perfil

E-mails conocidos

mcomuzzi@unist.ac.kr

Fecha de nacimiento

Proyectos de investigación

Unidades organizativas

Puesto de trabajo

Apellidos

Comuzzi

Nombre de pila

Marco

Nombre

Nombres alternativos

Afiliaciones conocidas

Ulsan National Institute of Science and Technology, South Korea

Páginas web conocidas

Página completa del ítem
Notificar un error en este autor

Resultados de la búsqueda

Mostrando 1 - 1 de 1
  • Artículo
    A Hybrid Reliability Metric for SLA Predictive Monitoring
    Comuzzi, Marco; Márquez-Chamorro, Alfonso E.; Resinas Arias de Reyna, Manuel. Actas de las XV Jornadas de Ingeniería de Ciencia e Ingeniería de Servicios (JCIS 2019), 2019-09-02.
    Modern SLA management includes SLA prediction based on data collected during service operations. Besides overall accuracy of a prediction model, decision makers should be able to measure the reliability of individual predictions before taking important decisions, such as whether to renegotiate an SLA. Measures of reliability of individual predictions provided by machine learning techniques tend to depend strictly on the technique chosen and to neglect the features of the system generating the data used to learn a model, i.e., the service provisioning landscape in this case. In this paper, we define a hybrid measure of reliability of an individual SLA prediction for classification models, which accounts for both the reliability of the chosen prediction technique, if available, and features capturing the variability of the service provisioning scenario. The metric is evaluated empirically using SLAs and event logs of a real world case. This paper was presented in ACM Symposium on Applied Computing (SAC) in April 2019 (GGS Class 2).