McDPC: Multi‐center density peak clustering
Density peak clustering (DPC) is a recently developed density-based clustering algorithm that achieves competitive performance in a non-iterative manner. DPC is capable of effectively handling clusters with single density peak (single center), i.e., based on DPC’s hypothesis, one and only one data p...
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sg-smu-ink.sis_research-61892020-07-23T18:50:52Z McDPC: Multi‐center density peak clustering WANG, Yizhang WANG, Di ZHANG, Xiaofeng PANG, Wei MIAO, Chunyan TAN, Ah-hwee ZHOU, You Density peak clustering (DPC) is a recently developed density-based clustering algorithm that achieves competitive performance in a non-iterative manner. DPC is capable of effectively handling clusters with single density peak (single center), i.e., based on DPC’s hypothesis, one and only one data point is chosen as the center of any cluster. However, DPC may fail to identify clusters with multiple density peaks (multi-centers) and may not be able to identify natural clusters whose centers have relatively lower local density. To address these limitations, we propose a novel clustering algorithm based on a hierarchical approach, named multi-center density peak clustering (McDPC). Firstly, based on a widely adopted hypothesis that the potential cluster centers are relatively far away from each other. McDPC obtains centers of the initial micro-clusters (named representative data points) whose minimum distance to the other higher-density data points are relatively larger. Secondly, the representative data points are autonomously categorized into different density levels. Finally, McDPC deals with micro-clusters at each level and if necessary, merges the micro-clusters at a specific level into one cluster to identify multi-center clusters. To evaluate the effectiveness of our proposed McDPC algorithm, we conduct experiments on both synthetic and real-world datasets and benchmark the performance of McDPC against other state-of-the-art clustering algorithms. We also apply McDPC to perform image segmentation and facial recognition to further demonstrate its capability in dealing with real-world applications. The experimental results show that our method achieves promising performance. 2020-02-01T08:00:00Z text application/pdf https://ink.library.smu.edu.sg/sis_research/5186 info:doi/10.1007/s00521-020-04754-5 https://ink.library.smu.edu.sg/context/sis_research/article/6189/viewcontent/NCAA2020.pdf http://creativecommons.org/licenses/by-nc-nd/4.0/ Research Collection School Of Computing and Information Systems eng Institutional Knowledge at Singapore Management University Density peak clustering Multi-center cluster Image segmentation Databases and Information Systems Programming Languages and Compilers Software Engineering |
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Density peak clustering Multi-center cluster Image segmentation Databases and Information Systems Programming Languages and Compilers Software Engineering WANG, Yizhang WANG, Di ZHANG, Xiaofeng PANG, Wei MIAO, Chunyan TAN, Ah-hwee ZHOU, You McDPC: Multi‐center density peak clustering |
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Density peak clustering (DPC) is a recently developed density-based clustering algorithm that achieves competitive performance in a non-iterative manner. DPC is capable of effectively handling clusters with single density peak (single center), i.e., based on DPC’s hypothesis, one and only one data point is chosen as the center of any cluster. However, DPC may fail to identify clusters with multiple density peaks (multi-centers) and may not be able to identify natural clusters whose centers have relatively lower local density. To address these limitations, we propose a novel clustering algorithm based on a hierarchical approach, named multi-center density peak clustering (McDPC). Firstly, based on a widely adopted hypothesis that the potential cluster centers are relatively far away from each other. McDPC obtains centers of the initial micro-clusters (named representative data points) whose minimum distance to the other higher-density data points are relatively larger. Secondly, the representative data points are autonomously categorized into different density levels. Finally, McDPC deals with micro-clusters at each level and if necessary, merges the micro-clusters at a specific level into one cluster to identify multi-center clusters. To evaluate the effectiveness of our proposed McDPC algorithm, we conduct experiments on both synthetic and real-world datasets and benchmark the performance of McDPC against other state-of-the-art clustering algorithms. We also apply McDPC to perform image segmentation and facial recognition to further demonstrate its capability in dealing with real-world applications. The experimental results show that our method achieves promising performance. |
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WANG, Yizhang WANG, Di ZHANG, Xiaofeng PANG, Wei MIAO, Chunyan TAN, Ah-hwee ZHOU, You |
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WANG, Yizhang WANG, Di ZHANG, Xiaofeng PANG, Wei MIAO, Chunyan TAN, Ah-hwee ZHOU, You |
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WANG, Yizhang |
title |
McDPC: Multi‐center density peak clustering |
title_short |
McDPC: Multi‐center density peak clustering |
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McDPC: Multi‐center density peak clustering |
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McDPC: Multi‐center density peak clustering |
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McDPC: Multi‐center density peak clustering |
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mcdpc: multi‐center density peak clustering |
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Institutional Knowledge at Singapore Management University |
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2020 |
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https://ink.library.smu.edu.sg/sis_research/5186 https://ink.library.smu.edu.sg/context/sis_research/article/6189/viewcontent/NCAA2020.pdf |
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