상세 보기
- Kim, Jeong-Hun;
- Choi, Jong-Hyeok;
- Park, Young-Ho;
- Leung, Carson Kai-Sang;
- Nasridinov, Aziz
WEB OF SCIENCE
13SCOPUS
27초록
Spectral clustering is a well-known graph-theoretic clustering algorithm. Although spectral clustering has several desirable advantages (such as the capability of discovering non-convex clusters and applicability to any data type), it often leads to incorrect clustering results because of high sensitivity to noise points. In this study, we propose a robust spectral clustering algorithm known as KNN-SC that can discover exact clusters by decreasing the influence of noise points. To achieve this goal, we present a novel approach that filters out potential noise points by estimating the density difference between data points using k-nearest neighbors. In addition, we introduce a novel method for generating a similarity graph in which various densities of data points are effectively represented by expanding the nearest neighbor graph. Experimental results on synthetic and real-world datasets demonstrate that KNN-SC achieves significant performance improvement over many state-of-the-art spectral clustering algorithms.
키워드
- 제목
- KNN-SC: Novel Spectral Clustering Algorithm Using k-Nearest Neighbors
- 저자
- Kim, Jeong-Hun; Choi, Jong-Hyeok; Park, Young-Ho; Leung, Carson Kai-Sang; Nasridinov, Aziz
- 발행일
- 2021-11
- 유형
- Article
- 저널명
- IEEE Access
- 권
- 9
- 페이지
- 152616 ~ 152627