2018
DOI: 10.4108/eai.13-7-2018.163339
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An Improved Weighted Base Classification for Optimum Weighted Nearest Neighbor Classifiers

Abstract: Existing classification studies use two non-parametric classifiers-k-nearest neighbours (kNN) and decision trees, and one parametric classifier-logistic regression, generating high accuracies. Previous research work has compared the results of these classifiers with training patterns of different sizes to study alcohol tests. In this paper, the Improved Version of the kNN (IVkNN) algorithm is presented which overcomes the limitation of the conventional kNN algorithm to classify wine quality. The proposed metho… Show more

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