نتایج جستجو برای: distinction sensitive learning vector quantization

تعداد نتایج: 1091013  

2004
Jaakko Suutala Susanna Pirttikangas Jukka Riekki Juha Röning

This paper reports experiments of recognizing walkers based on measurements with a pressure-sensitive EMFi-floor. Identification is based on a twolevel classifier system. The first level performs Learning Vector Quantization (LVQ) with a reject option to identify or to reject a single footstep. The second level classifies or rejects a sequence of three consecutive identified footsteps based on ...

1999
M. Vento

$EVWUDFW A reject rule devised for a neural classifier based on the Learning Vector Quantization (LVQ) paradigm is presented. The reject option is carried out adaptively to the specific application domain. It is assumed that a performance function P is defined which, taking into account the requirements of a given application expressed in terms of classification, misclassification and reject co...

2014
Bassam Mokbel Benjamin Paaßen Barbara Hammer

More complex data formats and dedicated structure metrics have spurred the development of intuitive machine learning techniques which directly deal with dissimilarity data, such as relational learning vector quantization (RLVQ). The adjustment of metric parameters like relevance weights for basic structural elements constitutes a crucial issue therein, and first methods to automatically learn m...

2007
Aree Witoelar Michael Biehl Barbara Hammer

Learning Vector Quantization (LVQ) are popular multi-class classification algorithms. Prototypes in an LVQ system represent the typical features of classes in the data. Frequently multiple prototypes are employed for a class to improve the representation of variations within the class and the generalization ability. In this paper, we investigate the dynamics of LVQ in an exact mathematical way,...

1996
ROBERTO ODORICO

Kohonen’s learning vector quantization (LVQ)is modifiedby attributingtrainingcountersto eachneuron, whichrecordits trainingstatistics.Duringtraining,thisallowsfor dynamicself-allocationof theneuronsto classes.In the classificationstage trainingcountersprovidean estimateof the reliabilityof classificationof the singleneurons, whichcan be exploitedto obtaina substantiallyhigherpurity of classi$ca...

Journal: :IEEE transactions on neural networks 2003
Davide Anguita Andrea Boni Sandro Ridella

In this paper, we propose a digital architecture for support vector machine (SVM) learning and discuss its implementation on a field programmable gate array (FPGA). We analyze briefly the quantization effects on the performance of the SVM in classification problems to show its robustness, in the feedforward phase, respect to fixed-point math implementations; then, we address the problem of SVM ...

2015
D. Nebel T. Villmann

In this article we consider a median variant of the learning vector quantization (LVQ) classifier for classification of dissimilarity data. However, beside the median aspect, we propose to optimize the receiver-operating characteristics (ROC) instead of the classification accuracy. In particular, we present a probabilistic LVQ model with an adaptation scheme based on a generalized ExpectationMa...

Journal: :IJAISC 2009
Bailing Zhang Steven Guan

Learning Vector Quantisation (LVQ) is a method of applying the Vector Quantisation (VQ) to generate references for Nearest Neighbour (NN) classification. Though successful in many occasions, LVQ suffers from several shortcomings, especially the reference vectors are prone to diverge. In this paper, we propose a Classified Vector Quantisation (CVQ) to establish VQ for classification. By CVQ, eac...

2009
Marek Grochowski Wlodzislaw Duch

Neural networks and other sophisticated machine learning algorithms frequently miss simple solutions that can be discovered by a more constrained learning methods. Transition from a single neuron solving linearly separable problems, to multithreshold neuron solving k-separable problems, to neurons implementing prototypes solving q-separable problems, is investigated. Using Learning Vector Quant...

2014
Bassam Mokbel Benjamin Paaßen Barbara Hammer

Recent extensions of learning vector quantization (LVQ) to general (dis-)similarity data have paved the way towards LVQ classifiers for possibly discrete, structured objects such as sequences addressed by classical alignment. In this contribution, we propose a metric learning scheme based on this framework which allows for autonomous learning of the underlying scoring matrix according to a give...

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