نتایج جستجو برای: مدل lvq

تعداد نتایج: 120544  

Journal: :IEEE transactions on neural networks 2003
Sambu Seo Mathias Bode Klaus Obermayer

We propose a new method for the construction of nearest prototype classifiers which is based on a Gaussian mixture ansatz and which can be interpreted as an annealed version of learning vector quantization (LVQ). The algorithm performs a gradient descent on a cost-function minimizing the classification error on the training set. We investigate the properties of the algorithm and assess its perf...

2005
Anarta Ghosh Michael Biehl Barbara Hammer

Learning vector quantization (LVQ) constitutes a powerful and simple method for adaptive nearest prototype classification which has been introduced based on heuristics. Recently, a mathematical foundation by means of a cost function has been proposed which, as a limit case, yields a learning rule very similar to classical LVQ2.1 and also motivates a modification thereof which shows better stabi...

2011
Salim Lahmiri

Article history: Received July 20, 2011 Accepted 7 October 2011 Available online 8 October 2011 The purpose of this paper is to predict the S&P500 down moves with technical analysis indicators using learning vector quantization (LVQ) neural networks and probabilistic neural networks (PNN). In addition, entropy-based input selection technique is employed to improve the prediction accuracies. The...

2011
Barbara Hammer Frank-Michael Schleif Xibin Zhu

Prototype based models offer an intuitive interface to given data sets by means of an inspection of the model prototypes. Supervised classification can be achieved by popular techniques such as learning vector quantization (LVQ) and extensions derived from cost functions such as generalized LVQ (GLVQ) and robust soft LVQ (RSLVQ). These methods, however, are restricted to Euclidean vectors and t...

2016
Siti Norul Huda Sheikh Abdullah Farah Aqilah Bohani Baher Hani Nayef Shahnorbanun Sahran Omar Al Akash Rizuana Iqbal Hussain Fuad Ismail

Brain magnetic resonance imaging (MRI) classification into normal and abnormal is a critical and challenging task. Owing to that, several medical imaging classification techniques have been devised in which Learning Vector Quantization (LVQ) is amongst the potential. The main goal of this paper is to enhance the performance of LVQ technique in order to gain higher accuracy detection for brain t...

2012
Petros Karakitsos Charalampos Chrelias Abraham Pouliakis George Koliopoulos Aris Spathis Maria Kyrgiou Christos Meristoudis Aikaterini Chranioti Christine Kottaridi George Valasoulis Ioannis Panayiotides Evangelos Paraskevaidis

Objective of this study is to investigate the potential of the learning vector quantizer neural network (LVQ-NN) classifier on various diagnostic variables used in the modern cytopathology laboratory and to build an algorithm that may facilitate the classification of individual cases. From all women included in the study, a liquid-based cytology sample was obtained; this was tested via HPV DNA ...

2007
Michael Biehl Anarta Ghosh

Learning vector quantization (LVQ) schemes constitute intuitive, powerful classification heuristics with numerous successful applications but, so far, limited theoretical background. We study LVQ rigorously within a simplifying model situation: two competing prototypes are trained from a sequence of examples drawn from a mixture of Gaussians. Concepts from statistical physics and the theory of ...

2006
Michael Biehl Piter Pasma Marten Pijl Lidia Sánchez Nicolai Petkov

We apply Learning Vector Quantization (LVQ) in automated boar semen quality assessment. The classification of single boar sperm heads into healthy (normal) and non-normal ones is based on grey-scale microscopic images only. Sample data was classified by veterinary experts and is used for training a system with a number of prototypes for each class. We apply as training schemes Kohonen’s LVQ1 an...

1995
Gerhard Rigoll

In this paper, a new neural network paradigm and its application to recognition of speech patterns is presented. The novel NN paradigm is a multilayer version of the well-known LVQ algorithm from Kohonen. The approach includes the following innovations and improvements compared to other popular neural network paradigms: 1) It is according to the knowledge of the author the first multilayer vers...

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