Evaluation of k-nearest neighbour classifier performance for heterogeneous data sets

被引:0
|
作者
Najat Ali
Daniel Neagu
Paul Trundle
机构
[1] University of Bradford,Faculty of Engineering and Informatics
来源
SN Applied Sciences | 2019年 / 1卷
关键词
k-nearest neighbour; Heterogeneous data set; Combination similarity measures;
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摘要
Distance-based algorithms are widely used for data classification problems. The k-nearest neighbour classification (k-NN) is one of the most popular distance-based algorithms. This classification is based on measuring the distances between the test sample and the training samples to determine the final classification output. The traditional k-NN classifier works naturally with numerical data. The main objective of this paper is to investigate the performance of k-NN on heterogeneous datasets, where data can be described as a mixture of numerical and categorical features. For the sake of simplicity, this work considers only one type of categorical data, which is binary data. In this paper, several similarity measures have been defined based on a combination between well-known distances for both numerical and binary data, and to investigate k-NN performances for classifying such heterogeneous data sets. The experiments used six heterogeneous datasets from different domains and two categories of measures. Experimental results showed that the proposed measures performed better for heterogeneous data than Euclidean distance, and that the challenges raised by the nature of heterogeneous data need personalised similarity measures adapted to the data characteristics.
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