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                                       Details van artikel 7 van 39 gevonden artikelen
 
 
  Classification of Textual Documents Using Learning Vector Quantization
 
 
Titel: Classification of Textual Documents Using Learning Vector Quantization
Auteur: Muhammad Fahad Umer
M. Sikander Hayat Khiyal
Verschenen in: Information technology journal
Paginering: Jaargang 6 (2007) nr. 1 pagina's 154-159
Jaar: 2007
Inhoud: The classification of a large collection of texts into predefined set of classes is an enduring research problem. The comparative study of classification algorithms shows that there is a tradeoff between accuracy and complexity of the classification systems. This study evaluates the Learning Vector Quantization (LVQ) network for classifying text documents. In the LVQ method, each class is described by a relatively small number of codebook vectors. These codebook vectors are placed in the feature space such that the decision boundaries are approximated by the nearest neighbor rule. The LVQ require less training examples and are much faster than other classification methods. The experimental results show that the Learning Vector Quantization approach outperforms the k-NN, Rocchio, NB and Decision Tree classifiers and is comparable to SVMs.
Uitgever: Asian Network for Scientific Information (provided by DOAJ)
Bronbestand: Elektronische Wetenschappelijke Tijdschriften
 
 

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