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Machine learning / Vector quantization / Quantization / Competitive learning / Linde–Buzo–Gray algorithm / Self-organizing map / Vector space / Rate–distortion theory / Pattern recognition / Neural networks / Algebra / Mathematics
Date: 2012-10-10 16:17:59
Machine learning
Vector quantization
Quantization
Competitive learning
Linde–Buzo–Gray algorithm
Self-organizing map
Vector space
Rate–distortion theory
Pattern recognition
Neural networks
Algebra
Mathematics

Learning Decentralized Goal-based Vector Quantization

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