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Adaptive metric learning vector quantization for ordinal classification
Shereen Fouad
*
, Peter Tino
*
Corresponding author for this work
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Dive into the research topics of 'Adaptive metric learning vector quantization for ordinal classification'. Together they form a unique fingerprint.
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Keyphrases
Learning Vector Quantization
100%
Ordinal Classification
100%
Adaptive Metric Learning
100%
Ordinal Learning
60%
Class Order
40%
Pattern Analysis
20%
Competitive Performance
20%
Classification Scheme
20%
Detrimental Effects
20%
Nonlinear Classification
20%
Prototype Model
20%
Computational Cost
20%
Problem Analysis
20%
Order Information
20%
Classification Accuracy
20%
Quantization Scheme
20%
Classification Model
20%
Metric Learning
20%
Ordinal Regression
20%
Class Prototype
20%
Naturally Ordered
20%
Nominal Classification
20%
Computer Science
Vector Quantization
100%
Classification Scheme
20%
Computational Cost
20%
Pattern Detection
20%
Classification Models
20%
Classification Accuracy
20%
Data Item
20%
Order Information
20%
Order Relationship
20%
Nominal Classification
20%