Combining Multiple Clustering Methods Based on Core Group

  • Authors:
  • Tian-yang Lv;Shao-bin Huang;Xi-zhe Zhang;Zheng-xuan Wang

  • Affiliations:
  • Jilin University, China/ Harbin Engineering University, China;Harbin Engineering University, China;Jilin University, China;Jilin University, China

  • Venue:
  • SKG '06 Proceedings of the Second International Conference on Semantics, Knowledge, and Grid
  • Year:
  • 2006

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Abstract

As an unsupervised technique, clustering analysis has been widely applied in various fields. However, it is usually difficult to select an appropriate clustering method for an application, while no clustering method is suitable for all situations. This paper proposes a novel method to combine multiple clustering methods. First, the paper combines different agglomerative hierarchical methods in one clustering process to obtain core groups. Core group refers to the data that are always clustered together no matter what clustering method is applied. Then, it adopts other kind of clustering methods to refine the core groups and index database. In addition to conduct a series of experiments on the datasets from UCI, the paper applies the proposed method in a new research field, 3D model retrieval, to analyze and index the 3D model database.