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Ddbscan: a density detection dbscan algorithm in e-commerce sites evaluation

Jianhua Jiang, Haiyan Bian, Yumian Yang


To solve the problem of the uneven density data of DBSCAN algorithm, this paper proposes a density detection DBSCAN algorithm, which is named as DDBSCAN. Firstly, the density detection functions are designed as the evaluation standard of data density; secondly, high-dimensional data are classified into several partitions based on different density values; thirdly, Eps and MinPts parameters are set up in these partitions automatically; finally, the DBSCAN algorithm is applied to each partition respectively. Experimental results show that the proposed DDBSCAN algorithm is superior to the original DBSCAN in uneven density data clustering perspective.


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  • Google Scholar
  • Открыть J-ворота
  • Национальная инфраструктура знаний Китая (CNKI)
  • CiteFactor
  • Космос ЕСЛИ
  • Каталог индексирования исследовательских журналов (DRJI)
  • Секретные лаборатории поисковых систем
  • Евро Паб
  • ICMJE

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