Multi-Objective Parameter Selection for Classifiers
Setting the free parameters of classifiers to different values can have a profound impact on their performance. For some methods, specialized tuning algorithms have been developed. These approaches mostly tune parameters according to a single criterion, such as the cross-validation error. However, it is sometimes desirable to obtain parameter values that optimize several concurrent - often conflicting - criteria. The TunePareto package provides a general and highly customizable framework to select optimal parameters for classifiers according to multiple objectives. Several strategies for sampling and optimizing parameters are supplied. The algorithm determines a set of Pareto-optimal parameter configurations and leaves the ultimate decision on the weighting of objectives to the researcher. Decision support is provided by novel visualization techniques.
Year of publication: |
2012-01-30
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Authors: | Müssel, Christoph ; Lausser, Ludwig ; Maucher, Markus ; Kestler, Hans A. |
Published in: |
Journal of Statistical Software. - American Statistical Association. - Vol. 46.2012, i05
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Publisher: |
American Statistical Association |
Saved in:
freely available
Saved in favorites
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