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ADMA
2006
Springer

An Effective Combination Based on Class-Wise Expertise of Diverse Classifiers for Predictive Toxicology Data Mining

14 years 2 months ago
An Effective Combination Based on Class-Wise Expertise of Diverse Classifiers for Predictive Toxicology Data Mining
This paper presents a study on the combination of different classifiers for toxicity prediction. Two combination operators for the Multiple-Classifier System definition are also proposed. The classification methods used to generate classifiers for combination are chosen in terms of their representability and diversity and include the Instance-based Learning algorithm (IBL), Decision Tree learning algorithm (DT), Repeated Incremental Pruning to Produce Error Reduction (RIPPER), Multi-Layer Perceptrons (MLPs) and Support Vector Machine (SVM). An effective approach of combining classwise expertise of diverse classifiers has been proposed and evaluated on seven toxicity data sets. The experimental results show that the performance of the combined classifier over seven data sets can achieve 69.24% classification
Daniel Neagu, Gongde Guo, Shanshan Wang
Added 13 Oct 2010
Updated 13 Oct 2010
Type Conference
Year 2006
Where ADMA
Authors Daniel Neagu, Gongde Guo, Shanshan Wang
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