de
en
Schliessen
Detailsuche
Bibliotheken
Projekt
Impressum
Datenschutz
zum Inhalt
Detailsuche
Schnellsuche:
OK
Ergebnisliste
Titel
Titel
Inhalt
Inhalt
Seite
Seite
Im Dokument suchen
Zhu, Xibin: Adaptive prototype-based dissimilarity learning. 2015
Inhalt
Introduction
Prototype-based learning
Introduction
Prototype-based clustering
Generative topographic mapping
Neural gas
Affinity propagation
Prototype-based classification
Generalized learning vector quantization
Robust soft learning vector quantization
Advantages of prototype-based methods
Evaluation measures
Conclusions
Challenges of dissimilarity data
Introduction
Properties of dissimilarity data
Linear embedding of dissimilarity data
Euclidean embedding
Pseudo-Euclidean embedding
Correction of non-Euclidean dissimilarity data
Ways to deal with dissimilarity data
Data sets
Conclusions
Prototype-based learning for dissimilarity data
Introduction
A Review: relational prototype-based clustering
Relational neural gas
Relational generative topographic mapping
Relational prototype-based classification
Relational GLVQ
Relational RSLVQ
Experiments
Conclusions
Speed-up techniques for large scale problems
Introduction
Patch processing
Patch relational neural gas and patch relational topographic mapping
Patch affinity propagation
Nyström approximation
Experiments on biomedical applications
Quality of the Nyström approximation
Computational complexity
Patch and Nyström RGLVQ
Conclusions
Adaptive conformal learning vector quantization
Introduction
Conformal prediction
Prediction region and non-conformity measure
Confidence and credibility
Inductive conformal prediction
Validity of conformal predictors
Adaptive conformal relational GLVQ
Experiments
Conclusions
Adaptive conformal semi-supervised LVQ
Introduction
Semi-supervised conformal relational GLVQ
Experiments
Conclusions
Conclusions
Bibliography