2014
DOI: 10.2139/ssrn.2828088
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Tuning a Multiple Classifier System for Side Effect Discovery Using Genetic Algorithms

Abstract: Abstract-In previous work, a novel supervised framework implementing a binary classifier was presented that obtained excellent results for side effect discovery. Interestingly, unique side effects were identified when different binary classifiers were used within the framework, prompting the investigation of applying a multiple classifier system. In this paper we investigate tuning a side effect multiple classifying system using genetic algorithms. The results of this research show that the novel framework imp… Show more

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