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Proceedings of

International Conference on Advances in Computer Science and Electronics Engineering CSEE 2014

"REVIEW OF CURRENT ONLINE DYNAMIC UNSUPERVISED FEED FORWARD NEURAL NETWORK CLASSIFICATION"

SAMEEM ABDUL KAREEM HAITHAM SABAH HASAN ROYA ASADI
DOI
10.15224/978-1-63248-000-2-36
Pages
21 - 28
Authors
3
ISBN
978-1-63248-000-2

Abstract: “Online Dynamic Unsupervised Feed Forward Neural Network (ODUFFNN) classification is suitable to be applied in different research areas and environments such as email logs, networks, credit card transactions, astronomy and satellite communications. Currently, there are a few strong methods as ODUFFNN classification, although they have general problems. The goal of this research is an investigation of the critical problems and comparison of current ODUFFNN classification. For experimental results, Evolving Self-Organizing Map (ESOM) and Dynamic Self-Organizing Map (DSOM) as strong related methods are considered; and also they applied some difficult datasets for clustering from the UCI Dataset Repository. The results of the ESOM and the DSOM methods are compared with the results of some related clustering methods. The clustering time is measured by the number of epochs and CPU time usage. The clustering accuracies of methods are measured by employing F-measure through an average of three”

Keywords: Neural Network (NN) model, Feed Forward Unsupervised Classification, Training, Epoch, Online Dynamic Unsupervised Feed Forward Neural Network (ODUFFNN)

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