Probability theory: (lecture 2 on AMLbook.com) maximum likelihood estimation (MLE) get parameters from data Hoeffding’s inequality (HI) how good are my.
Multivariate Methods Slides from Machine Learning by Ethem Alpaydin Expanded by some slides from Gutierrez-Osuna.
MACHINE LEARNING 8. Clustering. Motivation Based on E ALPAYDIN 2004 Introduction to Machine Learning © The MIT Press (V1.1) 2 Classification problem:
Lecture 10 Artificial Neural Networks Dr. Jianjun Hu mleg.cse.sc.edu/edu/csce833 CSCE833 Machine Learning University of South Carolina Department of Computer.
Reduces time complexity: Less computation Reduces space complexity: Less parameters Simpler models are more robust on small datasets More interpretable;
Fundamentals of Artificial Neural Networks Chapter 7 in amlbook.com.
Review of fundamental 1 Data mining in 1D: curve fitting by LLS Approximation-generalization tradeoff First homework assignment.
Fast algorithm and implementation of dissimilarity self-organizing maps
MACHINE LEARNING 6. Multivariate Methods 1. Based on E Alpaydın 2004 Introduction to Machine Learning © The MIT Press (V1.1) 2 Motivating Example Loan.
Ensembles—Combining Multiple Learners For Better Accuracy Reading Material Ensembles: 1. (optional).
Fundamentals of machine learning 1 Types of machine learning In-sample and out-of-sample errors Version space VC dimension.
Machine Learning CSE 681 CH2 - Supervised Learning.