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2008
Springer

Assessing the Impact of Changing Environments on Classifier Performance

14 years 2 months ago
Assessing the Impact of Changing Environments on Classifier Performance
Abstract. The purpose of this paper is to test the hypothesis that simple classifiers are more robust to changing environments than complex ones. We propose a strategy for generating artificial, but realistic domains, which allows us to control the changing environment and test a variety of situations. Our results suggest that evaluating classifiers on such tasks is not straightforward since the changed environment can yield a simpler or more complex domain. We propose a metric capable of taking this issue into consideration and evaluate our classifiers using it. We conclude that in mild cases of population drifts simple classifiers deteriorate more than complex ones and that in more severe cases as well as in class definition changes, all classifiers deteriorate to about the same extent. This means that in all cases, complex classifiers remain more accurate than simpler ones, thus challenging the hypothesis that simple classifiers are more robust to changing environments than complex ...
Rocío Alaíz-Rodríguez, Nathal
Added 12 Oct 2010
Updated 12 Oct 2010
Type Conference
Year 2008
Where AI
Authors Rocío Alaíz-Rodríguez, Nathalie Japkowicz
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