de
en
Schliessen
Detailsuche
Bibliotheken
Projekt
Impressum
Datenschutz
zum Inhalt
Detailsuche
Schnellsuche:
OK
Ergebnisliste
Titel
Titel
Inhalt
Inhalt
Seite
Seite
Im Dokument suchen
Saralajew, Sascha: New Prototype Concepts in Classification Learning. 2020
Inhalt
Introduction
Scope and goal
Overview
Learning Vector Quantization
General concept: Dissimilarities and prototypes
Dissimilarities
Prototypes and the best matching prototype principle
Realizations
Kohonen's learning vector quantization algorithms
Generalized learning vector quantization
Generalized matrix learning vector quantization
Generalized Tangent Learning Vector Quantization
Motivation
Set-prototypes and respective learning vector quantization variants
Generalized tangent learning vector quantization: Affine subspace prototypes
Restricted generalized tangent learning vector quantization: ns-orthotope prototypes
Relations to other concepts
Hausdorff distances
Tangent space approximations
Generalized matrix learning vector quantization
Accuracy and interpretability evaluations
Toy datasets
Real-world datasets
Generalized tangent learning vector quantization as margin maximizer
Theoretical analysis
Experimental evaluation
Related work
Summary and discussion
Classification-by-Components Networks
Motivation
Probabilistic modeling of reasoning over a set of components
Reasoning over a set of full-size components
Reasoning over a set of patch components
Multiple components and reasoning strategies
General remarks
Joint training with a trainable feature extractor
Evaluation without a feature extractor
Evaluation with a feature extractor
MNIST: Ablation study
MNIST: Varying the number of components
MNIST: Initial robustness and rejection evaluation
MNIST: Interpretation of the reasoning process
GTSRB
CIFAR-10
ImageNet
Related work
Summary and discussion
Summary and Concluding Remarks
Publications
Mathematical Symbols
Acronyms
References