In this paper, a new classification method for enhancing the performance of K‐Nearest Neighbor is proposed which uses robust neighbors in training data. The robust neighbors are detected using a validation process. This method is more robust than traditional equivalent methods. This new classification method is called Modified K‐Nearest Neighbor. Inspired the traditional KNN algorithm, the main idea is classifying the test samples according to their neighbor tags. This method is a kind of weighted KNN so that these weights are determined using a different procedure. The procedure computes the fraction of the same labeled neighbors to the total number of neighbors. The proposed method is evaluated on a variety of several standard UCI data sets. Experiments show the excellent improvement in accuracy in comparison with KNN method.
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8 May 2009
IAENG TRANSACTIONS ON ENGINEERING TECHNOLOGIES VOLUME 2: Special Edition of the World Congress on Engineering and Computer Science
22–24 October 2008
San Francisco (CA)
Research Article|
May 08 2009
Validation Based Modified K‐Nearest Neighbor Available to Purchase
Hamid Parvin;
Hamid Parvin
Department of Computer Engineering, Iran University of Science and Technology, P.O. Box 16765‐163, Narmak, Tehran, Iran
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Hosein Alizadeh;
Hosein Alizadeh
Department of Computer Engineering, Iran University of Science and Technology, P.O. Box 16765‐163, Narmak, Tehran, Iran
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Behrouz Minaei‐Bidgoli
Behrouz Minaei‐Bidgoli
Department of Computer Engineering, Iran University of Science and Technology, P.O. Box 16765‐163, Narmak, Tehran, Iran
Search for other works by this author on:
Hamid Parvin
Hosein Alizadeh
Behrouz Minaei‐Bidgoli
Department of Computer Engineering, Iran University of Science and Technology, P.O. Box 16765‐163, Narmak, Tehran, Iran
AIP Conf. Proc. 1127, 153–161 (2009)
Citation
Hamid Parvin, Hosein Alizadeh, Behrouz Minaei‐Bidgoli; Validation Based Modified K‐Nearest Neighbor. AIP Conf. Proc. 8 May 2009; 1127 (1): 153–161. https://doi.org/10.1063/1.3146187
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