نتایج جستجو برای: learning vector quantization

تعداد نتایج: 794604  

1999
Mu-King TSAY

In this paper, the generalized learning vector quantization (GLVQ) algorithm is applied to design a handwritten Chinese character recognition system. The system proposed herein consists of two modules, feature transformation and recognizer. The feature transformation module is designed to extract discriminative features to enhance the recognition performance. The initial feature transformation ...

2003
Shintaro Momose Kentaro Sano Tadao Nakamura

Vector quantization(VQ) is an attractive technique for lossy data compression, which has been a key technology for data storage and/or transfer. So far, various competitive learning (CL) algorithms have been proposed to design optimal codebooks presenting quantization with minimized errors. However, their practical use has been limited for large scale problems, due to the computational complexi...

Journal: :CoRR 2012
Edwin V. Bonilla Antonio Robles-Kelly

In this paper we propose a simple yet powerful method for learning representations in supervised learning scenarios where an input datapoint is described by a set of feature vectors and its associated output may be given by soft labels indicating, for example, class probabilities. We represent an input datapoint as a K-dimensional vector, where each component is a mixture of probabilities over ...

2004
Barbara Hammer Marc Strickert Thomas Villmann

The support vector machine (SVM) constitutes one of the most successful current learning algorithms with excellent classification accuracy in large real-life problems and strong theoretical background. However, a SVM solution is given by a not intuitive classification in terms of extreme values of the training set and the size of a SVM classifier scales with the number of training data. General...

Journal: :Pattern Recognition Letters 2013
Andrés Ortiz Juan Manuel Górriz Javier Ramírez Francisco Jesús Martínez-Murcia

This paper presents a novel computer-aided diagnosis (CAD) tool for the diagnosis of the Alzheimer’s disease (AD) using structural Magnetic Resonance Images (MRIs). The proposed method uses information learnt from the tissue distribution of Gray Matter (GM) and White Matter (WM) in the brain, which is previously obtained by an unsupervised segmentation method. The tissue distribution of control...

Journal: :Expert Syst. Appl. 2012
Luigi Lamberti Francesco Camastra

This paper presents Handy, a real-time hand gesture recognizer based on a three color glove. The recognizer is formed by three modules. The first module, fed by the frame acquired by a webcam, identifies the hand image in the scene. The second module, a feature extractor, represents the image by a nine-dimensional feature vector. The third module, the classifier, is performed by means of Learni...

Journal: :European Journal of Operational Research 2007
Young U. Ryu Ramaswamy Chandrasekaran Varghese S. Jacob

A recently developed data separation/classification method, called isotonic separation, is applied to breast cancer prediction. Two breast cancer data sets, one with clean and sufficient data and the other with insufficient data, are used for the study and the results are compared against those of decision tree induction methods, linear programming discrimination methods, learning vector quanti...

Journal: :Int. J. Fuzzy Logic and Intelligent Systems 2011
Seok-Beom Roh Ji-Won Jeong Tae-Chon Ahn

In this paper, a new competition strategy for learning vector quantization is proposed. The simple competitive strategy used for learning vector quantization moves the winning prototype which is the closest to the newly given data pattern. We propose a new learning strategy based on k-nearest neighbor prototypes as the winning prototypes. The selection of several prototypes as the winning proto...

Journal: :Neurocomputing 2006
Marc Strickert Udo Seiffert Nese Sreenivasulu Winfriede Weschke Thomas Villmann Barbara Hammer

A correlation-based similarity measure is derived for generalized relevance learning vector quantization (GRLVQ). The resulting GRLVQ-C classifier makes Pearson correlation available in a classification cost framework where data prototypes and global attribute weighting terms are adapted into directions of minimum cost function values. In contrast to the Euclidean metric, the Pearson correlatio...

2011
Brijnesh J. Jain Klaus Obermayer

This contribution extends generalized LVQ, generalized relevance LVQ, and robust soft LVQ to the graph domain. The proposed approaches are based on the basic learning graph quantization (lgq) algorithm using the orbifold framework. Experiments on three data sets show that the proposed approaches outperform lgq and lgq2.1.

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