SVM Aggregating Intelligence: SVM, SVM Ensemble, SVM Classification Tree, and Evolving SVM Classification Tree
نویسنده
چکیده
This article scopes a concept of SVM aggregating intelligence as 3 levels research: aggregating for a better machine learning performance, aggregating for an adaptive/dynamic intelligent system, and aggregating for multitask and life-long continuous machine learning, and reviews existing SVM aggregating methods including SVM ensemble, SVM classification tree, and evolving SVM classification tree.
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