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Springer Machine Learning: Modeling Data Locally And Globally by Irwin King Kai-Zhu Huang Hai-Qin Yang
Machine Learning - Modeling Data Locally And Globally Presents A Novel And Unified Theory That Tries To Seamlessly Integrate Different Algorithms. Specifically The Book Distinguishes The Inner Nature Of Machine Learning Algorithms As Either Local Learning Or Global Learning. This Theory Not Only Connects Previous Machine Learning Methods Or Serves As Roadmap In Various Models But - More Importantly - It Also Motivates A Theory That Can Learn From Data Both Locally And Globally. This Would Help The Researchers Gain A Deeper Insight And Comprehensive Understanding Of The Techniques In This Field. The Book Reviews Current TopicsNew Theories And Applications. Kaizhu Huang Was A Researcher At The Fujitsu Research And Development Center And Is Currently A Research Fellow In The Chinese University Of Hong Kong. Haiqin Yang Leads The Image Processing Group At Hisilicon Technologies. Irwin King And Michael R. Lyu Are Professors At The Computer Science And Engineering Department Of The Chinese University Of Hong Kong.Show More