Maryam MousaviAzuraliza Abu Bakar
In recent years, clustering methods have attracted more attention in analysing and monitoring data streams. Density-based techniques are the remarkable category of clustering techniques that are able to detect the clusters with arbitrary shapes and noises. However, finding the clusters with local density varieties is a difficult task. For handling this problem, in this paper, a new density-based clustering algorithm for data streams is proposed. This algorithm can improve the offline phase of density-based algorithm based on MinPts parameter. The experimental results show that the proposed technique can improve the clustering quality in data streams with different densities.
Jing YangWenxin ZhuJianpei ZhangYue Yang
Murat, YusufDalkılıç GökhanRowanda Ahmed
Shifei DingJian ZhangHongjie JiaJun Qian