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Empirical studies on applying density-based clustering to stream data
- Kim, Yijin;
- Park, Jung-Eun;
- Youn, Jonghem;
- 심준호
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0초록
Density-based clustering has advantages over partition-based clustering, such as K-means, in that it does not need to specify the number of clusters (k) and can generate clusters of arbitrary shape. However, density-based clustering requires hyper-parameters such as proximity distance and the minimum number of proximity data that are suitable for data characteristics, and this greatly influences the clustering performance. In this paper, we present a density-based clustering algorithm for stream data, which exploits coresets in the sliding window model. We provide an experimental analysis of these hyper-parameters on the performance of the algorithm.
- 제목
- Empirical studies on applying density-based clustering to stream data
- 저자
- Kim, Yijin; Park, Jung-Eun; Youn, Jonghem; 심준호
- 발행일
- 2020-06
- 유형
- Article
- 권
- 11
- 호
- 6
- 페이지
- 615 ~ 622