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Computer Sciences

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Georgia State University

2006

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Svm-Based Negative Data Mining To Binary Classification, Fuhua Jiang Aug 2006

Svm-Based Negative Data Mining To Binary Classification, Fuhua Jiang

Computer Science Dissertations

The properties of training data set such as size, distribution and the number of attributes significantly contribute to the generalization error of a learning machine. A not well-distributed data set is prone to lead to a partial overfitting model. Two approaches proposed in this dissertation for the binary classification enhance useful data information by mining negative data. First, an error driven compensating hypothesis approach is based on Support Vector Machines (SVMs) with (1+k)-iteration learning, where the base learning hypothesis is iteratively compensated k times. This approach produces a new hypothesis on the new data set in which each label is …