目录 CHAPTER 1 Basics of Machine Learning 1.1 Problem statement and solution framework 1.2 Supervised learning 1.2.1 MLP 1.2.2 CNN 1.2.3 RBF network 1.2.4 SVM 1.2.5 Comments 1.3 Unsupervised learning 1.3.1 K-means 1.3.2 Self-organizing map 1.3.3 Comments 1.4 Representation learning 1.4.1 PCA 1.4.2 LDA 1.4.3 ICA 1.4.4 NMF 1.4.5 Comments References CHAPTER 2 Solving Multi-class Problems by Data-driven Topology-preservingOutput Codes 2.1 Think: Is complexity important? 2.2 Topology-preserving output code scheme 2.2.1 A first-place description 2.2.2 Definition of a TPOC map 2.2.3 TOP map learned from SOM 2.2.4 Learning algorithm for a TPOC map 2.2.5 An octa-phase-shift-keying (8-PSK) pattern example 2.3 Experimental results 2.3.1 Comparison of TPOC with DECOC 2.3.2 Comparison of TPOC with OAA 2.3.3 Comparison of TPOC with random code and natural code 2.3.4 Comparison of TPOC with q-TPOC scheme and ECOC scheme 2.3.5 Comparison of TPOC schemes with and without adaptive assignment of classifier complexity 2.3.6 Measured radar data classification with multiple SVM 2.4 Discussions 2.4.1 Advantages of TPOC over ECOC 2.4.2 Relation of TPOC to other related approaches 2.5 Summary Appendix Coding classes from a TPOC map Appendix 1 k-ary coding scheme: Using k-ary classifiers Appendix 2 Binary coding scheme: Using binary classifiers References CHAPTER 3 Robust Data Clustering by Learning Multi-metric Lq-norm Distances 3.1 Why distance measure is important? 3.2 Motivation for robust multi-metric clustering 3.3 Robust location estimation 3.3.1 RMML algorithm 3.3.2 Objective function 3.3.3 Non-Gaussianity measure of a mapped cluster 3.4 Robust outlier detection: ICSC algorithm
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