000798105 000__ 04667cam\a2200517Ii\4500 000798105 001__ 798105 000798105 005__ 20230306143506.0 000798105 006__ m\\\\\o\\d\\\\\\\\ 000798105 007__ cr\un\nnnunnun 000798105 008__ 170815s2017\\\\sz\\\\\\ob\\\\001\0\eng\d 000798105 019__ $$a1001298323$$a1001337444$$a1001374628 000798105 020__ $$a9783319601762$$q(electronic book) 000798105 020__ $$a3319601768$$q(electronic book) 000798105 020__ $$z9783319601755 000798105 020__ $$z331960175X 000798105 035__ $$aSP(OCoLC)on1001280311 000798105 035__ $$aSP(OCoLC)1001280311$$z(OCoLC)1001298323$$z(OCoLC)1001337444$$z(OCoLC)1001374628 000798105 040__ $$aYDX$$beng$$cYDX$$dN$T$$dGW5XE$$dN$T$$dOCLCF$$dUAB$$dEBLCP 000798105 049__ $$aISEA 000798105 050_4 $$aQ387 000798105 08204 $$a006.3/32$$223 000798105 1001_ $$aLi, Sheng. 000798105 24510 $$aRobust representation for data analytics :$$bmodels and applications /$$cSheng Li, Yun Fu. 000798105 260__ $$aCham :$$bSpringer,$$cc2017. 000798105 300__ $$a1 online resource. 000798105 336__ $$atext$$btxt$$2rdacontent 000798105 337__ $$acomputer$$bc$$2rdamedia 000798105 338__ $$aonline resource$$bcr$$2rdacarrier 000798105 4901_ $$aAdvanced information and knowledge processing,$$x1610-3947 000798105 504__ $$aIncludes bibliographical references and index. 000798105 5050_ $$aPreface; Contents; 1 Introduction; 1.1 What Are Robust Data Representations?; 1.2 Organization of the Book; Part I Robust Representation Models; 2 Fundamentals of Robust Representations; 2.1 Representation Learning Models; 2.1.1 Subspace Learning; 2.1.2 Multi-view Subspace Learning; 2.1.3 Dictionary Learning; 2.2 Robust Representation Learning; 2.2.1 Subspace Clustering; 2.2.2 Low-Rank Modeling; References; 3 Robust Graph Construction; 3.1 Overview; 3.2 Existing Graph Construction Methods; 3.2.1 Unbalanced Graphs and Balanced Graph; 3.2.2 Sparse Representation Based Graphs 000798105 5058_ $$a3.2.3 Low-Rank Learning Based Graphs3.3 Low-Rank Coding Based Unbalanced Graph Construction; 3.3.1 Motivation; 3.3.2 Problem Formulation; 3.3.3 Optimization; 3.3.4 Complexity Analysis; 3.3.5 Discussions; 3.4 Low-Rank Coding Based Balanced Graph Construction; 3.4.1 Motivation and Formulation; 3.4.2 Optimization; 3.5 Learning with Graphs; 3.5.1 Graph Based Clustering; 3.5.2 Transductive Semi-supervised Classification; 3.5.3 Inductive Semi-supervised Classification; 3.6 Experiments; 3.6.1 Databases and Settings; 3.6.2 Spectral Clustering with Graph 000798105 5058_ $$a3.6.3 Semi-supervised Classification with Graph3.6.4 Discussions; 3.7 Summary; References; 4 Robust Subspace Learning; 4.1 Overview; 4.2 Supervised Regularization Based Robust Subspace (SRRS); 4.2.1 Problem Formulation; 4.2.2 Theoretical Analysis; 4.2.3 Optimization; 4.2.3.1 Learn Subspace P on Fixed Low-Rank Representations; 4.2.3.2 Learn Low-Rank Representations Z on Fixed Subspace; 4.2.4 Algorithm and Discussions; 4.3 Experiments; 4.3.1 Object Recognition with Pixel Corruption; 4.3.2 Face Recognition with Illumination and Pose Variation; 4.3.3 Face Recognition with Occlusions 000798105 5058_ $$a4.3.4 Kinship Verification4.3.5 Discussions; 4.4 Summary; References; 5 Robust Multi-view Subspace Learning; 5.1 Overview; 5.2 Problem Definition; 5.3 Multi-view Discriminative Bilinear Projection (MDBP); 5.3.1 Motivation; 5.3.2 Formulation of MDBP; 5.3.2.1 Learning Shared Representations Across Views; 5.3.2.2 Incorporating Discriminative Regularization; 5.3.2.3 Modeling Temporal Smoothness; 5.3.2.4 Objective Function; 5.3.3 Optimization Algorithm; 5.3.3.1 Time Complexity Analysis; 5.3.4 Comparison with Existing Methods; 5.4 Experiments; 5.4.1 UCI Daily and Sports Activity Dataset 000798105 5058_ $$a5.4.1.1 Two-View Setting5.4.1.2 Baselines; 5.4.1.3 Classification Scheme; 5.4.1.4 Results; 5.4.2 Multimodal Spoken Word Dataset; 5.4.2.1 Three-View Setting; 5.4.2.2 Results; 5.4.3 Discussions; 5.4.3.1 Parameter Sensitivity and Convergence; 5.4.3.2 Experiments with Data Fusion and Feature Fusion; 5.5 Summary; References; 6 Robust Dictionary Learning; 6.1 Overview; 6.2 Self-Taught Low-Rank (S-Low) Coding ; 6.2.1 Motivation; 6.2.2 Problem Formulation; 6.2.3 Optimization; 6.2.4 Algorithm and Discussions; 6.3 Learning with S-Low Coding; 6.3.1 S-Low Clustering; 6.3.2 S-Low Classification 000798105 506__ $$aAccess limited to authorized users. 000798105 588__ $$aDescription based on print version record. 000798105 650_0 $$aKnowledge representation (Information theory) 000798105 650_0 $$aBig data. 000798105 7001_ $$aFu, Yun. 000798105 77608 $$iPrint version:$$z9783319601755$$z331960175X$$w(OCoLC)987282597 000798105 830_0 $$aAdvanced information and knowledge processing. 000798105 852__ $$bebk 000798105 85640 $$3SpringerLink$$uhttps://univsouthin.idm.oclc.org/login?url=http://link.springer.com/10.1007/978-3-319-60176-2$$zOnline Access$$91397441.1 000798105 909CO $$ooai:library.usi.edu:798105$$pGLOBAL_SET 000798105 980__ $$aEBOOK 000798105 980__ $$aBIB 000798105 982__ $$aEbook 000798105 983__ $$aOnline 000798105 994__ $$a92$$bISE