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How the Outliers Influence the Quality of Clustering?

Overview
Journal Entropy (Basel)
Publisher MDPI
Date 2022 Jul 27
PMID 35885141
Authors
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Abstract

In this article, we evaluate the efficiency and performance of two clustering algorithms: AHC (Agglomerative Hierarchical Clustering) and K-Means. We are aware that there are various linkage options and distance measures that influence the clustering results. We assess the quality of clustering using the Davies-Bouldin and Dunn cluster validity indexes. The main contribution of this research is to verify whether the quality of clusters without outliers is higher than those with outliers in the data. To do this, we compare and analyze outlier detection algorithms depending on the applied clustering algorithm. In our research, we use and compare the LOF (Local Outlier Factor) and COF (Connectivity-based Outlier Factor) algorithms for detecting outliers before and after removing 1%, 5%, and 10% of outliers. Next, we analyze how the quality of clustering has improved. In the experiments, three real data sets were used with a different number of instances.

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