We construct an geometry framework for any norm Support Vector Machine (SVM) classifiers. Within this framework, separating hyperplanes, dual descriptions and solutions of SVM classifiers are constructed by a purely geometric fashion. In contrast with the optimization theory used in SVM classifiers, we have no complicated computations any more. Each step in our theory is guided by elegant geometric intuitions.
CITATION STYLE
Zhou, D., Xiao, B., Zhou, H., & Dai, R. (2002). Global Geometry of SVM Classifiers. Institute of Automation Chinese Academy of Sciences. Retrieved from http://kyb.tuebingen.mpg.de/publications/pdfs/pdf2587.pdf
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