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Using Greedy algorithm: DBSCAN revisited II 被引量:2

Using Greedy algorithm: DBSCAN revisited Ⅱ
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摘要 The density-based clustering algorithm presented is different from the classical Density-Based Spatial Clustering of Applications with Noise (DBSCAN) (Ester et al., 1996), and has the following advantages: first, Greedy algorithm substitutes for R*-tree (Bechmann et al., 1990) in DBSCAN to index the clustering space so that the clustering time cost is decreased to great extent and I/O memory load is reduced as well; second, the merging condition to approach to arbitrary-shaped clusters is designed carefully so that a single threshold can distinguish correctly all clusters in a large spatial dataset though some density-skewed clusters live in it. Finally, authors investigate a robotic navigation and test two artificial datasets by the proposed algorithm to verify its effectiveness and efficiency. The density-based clustering algorithm presented is different from the classical Density-Based Spatial Clus- tering of Applications with Noise (DBSCAN) (Ester et al., 1996), and has the following advantages: first, Greedy algorithm substitutes for R*-tree (Bechmann et al., 1990) in DBSCAN to index the clustering space so that the clustering time cost is decreased to great extent and I/O memory load is reduced as well; second, the merging condition to approach to arbi- trary-shaped clusters is designed carefully so that a single threshold can distinguish correctly all clusters in a large spatial dataset though some density-skewed clusters live in it. Finally, authors investigate a robotic navigation and test two artificial datasets by the proposed algorithm to verify its effectiveness and efficiency.
出处 《Journal of Zhejiang University Science》 EI CSCD 2004年第11期1405-1412,共8页 浙江大学学报(自然科学英文版)
关键词 DBSCAN algorithm Greedy algorithm Density-skewed cluster DBSCAN运算法则 噪音 贪吃算法 偏斜密度群
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