作者
Sujacka Retno, Novia Hasdyna, Balqis Yafis
发表日期
2024/4/1
期刊
Journal of Advanced Computer Knowledge and Algorithms
卷号
1
期号
2
页码范围
42-46
简介
The large number of attributes in a large dataset can cause a decrease in the level of classification accuracy. Attribute reduction can be a solution to improve classification performance, especially in the K-NN algorithm. This research discusses the classification results of K-NN with attribute reduction using Purity. Based on the results of testing carried out on the Air Quality Dataset, the level of accuracy obtained after attribute reduction was 70.71%, while the level of accuracy obtained before attribute reduction was 56.44%, the increase in accuracy obtained from testing this dataset was equal to 14.27%. The proposed Purity method for attribute reduction can increase the accuracy level of the K-NN classification process.
学术搜索中的文章
S Retno, N Hasdyna, B Yafis - Journal of Advanced Computer Knowledge and …, 2024