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A study on GBW-KNN using statistical testing

Authors
Song, S.Kwak, Y.S.Kim, M.-H.Kang, M.S.
Issue Date
Apr-2021
Publisher
Karadeniz Technical University
Keywords
Classification; K Nearest Neighbour; Machine Learning; WKNN
Citation
Turkish Journal of Computer and Mathematics Education, v.12, no.5, pp.271 - 277
Journal Title
Turkish Journal of Computer and Mathematics Education
Volume
12
Number
5
Start Page
271
End Page
277
URI
https://scholarworks.bwise.kr/gachon/handle/2020.sw.gachon/80866
DOI
10.17762/turcomat.v12i5.896
ISSN
1309-4653
Abstract
In the 4th industrial revolution, big data and artificial intelligence are becoming more and more important. This is because the value can be four by applying artificial intelligence techniques to data generated and accumulated in real-time. Various industries utilize them to provide a variety of services and products to customers and enhance their competitiveness. The KNN algorithm is one of such analysis methods, which predicts the class of an unlabeled instance by using the classes of nearby neighbors. It is used a lot because it is simpler and easier to understand than other methods. In this study, we proposed a GBW-KNN algorithm that finds KNN after assigning weights to each individual based on the KNN graph. In addition, a statistical test was conducted to see if there was a significant difference in the performance difference between the KNN and GBW-KNN methods. As a result of the experiment, it was confirmed that the performance of GBW-KNN was excellent overall, and the difference in performance between the two methods was significant. © 2021 Karadeniz Technical University. All rights reserved.
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