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1. Super Vector Machine with Iris and Mushroom Dataset 2. SVM • In this presentation, we will be learning the characteristics of SVM by analyzing it with 2 different Datasets…
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Identification of Relevant Sections in Web Pages Using a Machine Learning Approach Jerrin Shaji George NIT Calicut November 8, 2012 Introduction � There is a massive amount…
Slide 1Input Space versus Feature Space in Kernel- Based Methods Scholkopf, Mika, Burges, Knirsch, Muller, Ratsch, Smola presented by: Joe Drish Department of Computer Science…
Slide 1Basics of Kernel Methods in Statistical Learning Theory Mohammed Nasser Professor Department of Statistics Rajshahi University E-mail: [email protected] Slide 2…
Slide 1Viola 2003 Learning and Vision: Discriminative Models Chris Bishop and Paul Viola Slide 2 Viola 2003 Part II: Algorithms and Applications Part I: Fundamentals Part…
Slide 1 Crash Course on Machine Learning Part IV Several slides from Derek Hoiem, and Ben Taskar Slide 2 What you need to know Dual SVM formulation – How it’s derived…