A Preliminary Study of Ordinal Metrics to Guide a Multi-Objective Evolutionary Algorithm
Hits: 6639
- Áreas de investigación:
- Año:
- 2011
- Tipo de publicación:
- Artículo en conferencia
- Palabras clave:
- Mean Absolute Error, Multi-Objective Evolutionary Algorithm, Ordinal Measures
- Autores:
- Título del libro:
- 11th International Conference on Intelligent Systems Design andApplications (ISDA 2011)
- Páginas:
- 1176-1181
- Dirección:
- Cordoba, Spain, Spain
- Mes:
- Noviembre
- BibTex:
- Abstract:
- There are many metrics available to measure the goodness of a classifier when working with ordinal datasets. These measures are divided into product-moment and association metrics. In this paper, the behavior of several metrics is studied in different situations. In addition, two new measures associated with an ordinal classifier are defined: the maximum and the minimum mean absolute error of all the classes. From the results of this comparison, a pair of metrics is selected (one associated to the overall error and another one to the error of the class with lowest level of classification) to guide the evolution of a multi-objective evolutionary algorithm, obtaining good results in generalization on ordinal datasets.