We present an introductory survey to optimal vector quantization and its first applications to Numerical Probability and, to a lesser extent to Information Theory and Data Mining. Both theoretical results on the quantization rate of a random vector taking values in ℝd (equipped with the canonical Euclidean norm) and the learning procedures that allow to design optimal quantizers (CLVQ and Lloyd’s procedures) are presented. We also introduce and investigate the more recent notion of greedy quantization which may be seen as a sequential optimal quantization. A rate optimal result is established. A brief comparison with Quasi-Monte Carlo method is also carried out
Winner-Takes-All (WTA) prescriptions for learning vector quantization (LVQ) are studied in the frame...
Abstract. The process of representing a large data set with a smaller number of vectors in the best ...
Winner-Takes-All (WTA) prescriptions for learning vector quantization (LVQ) are studied in the frame...
We present an introductory survey to optimal vector quantization and its first application...
We present an introductory survey to optimal vector quantization and its first application...
54 pagesWe present an introductory survey to optimal vector quantization and its first applications ...
We investigate the greedy version of the Lp-optimal vector quantization problem for an Rd-valued ran...
Sequential quantization is a constrained quantization method in which elements of a real-valued vect...
In this article the basic probabilistic results in the theory of vector quantization are surveyed. M...
The field of machine learning concerns the design of algorithms to learn and recognize complex patte...
Based on the notion of Mutual Information between the components of a random vector, we construct, f...
Learning vector quantization (LVQ) constitutes a powerful and intuitive method for adaptive nearest ...
Quantization is intrinsic to several data acquisition systems. This process is especially important ...
Learning vector quantization (LVQ) schemes constitute intuitive, powerful classification heuris-tics...
Representing a continuous random variable by a finite number of values is known as quantization. Giv...
Winner-Takes-All (WTA) prescriptions for learning vector quantization (LVQ) are studied in the frame...
Abstract. The process of representing a large data set with a smaller number of vectors in the best ...
Winner-Takes-All (WTA) prescriptions for learning vector quantization (LVQ) are studied in the frame...
We present an introductory survey to optimal vector quantization and its first application...
We present an introductory survey to optimal vector quantization and its first application...
54 pagesWe present an introductory survey to optimal vector quantization and its first applications ...
We investigate the greedy version of the Lp-optimal vector quantization problem for an Rd-valued ran...
Sequential quantization is a constrained quantization method in which elements of a real-valued vect...
In this article the basic probabilistic results in the theory of vector quantization are surveyed. M...
The field of machine learning concerns the design of algorithms to learn and recognize complex patte...
Based on the notion of Mutual Information between the components of a random vector, we construct, f...
Learning vector quantization (LVQ) constitutes a powerful and intuitive method for adaptive nearest ...
Quantization is intrinsic to several data acquisition systems. This process is especially important ...
Learning vector quantization (LVQ) schemes constitute intuitive, powerful classification heuris-tics...
Representing a continuous random variable by a finite number of values is known as quantization. Giv...
Winner-Takes-All (WTA) prescriptions for learning vector quantization (LVQ) are studied in the frame...
Abstract. The process of representing a large data set with a smaller number of vectors in the best ...
Winner-Takes-All (WTA) prescriptions for learning vector quantization (LVQ) are studied in the frame...