• Title of article

    Efficient agglomerative hierarchical clustering

  • Author/Authors

    Bouguettaya، نويسنده , , Athman and Yu، نويسنده , , Qi and Liu، نويسنده , , Xumin and Zhou، نويسنده , , Xiangmin and Song، نويسنده , , Andy، نويسنده ,

  • Issue Information
    روزنامه با شماره پیاپی سال 2015
  • Pages
    13
  • From page
    2785
  • To page
    2797
  • Abstract
    Hierarchical clustering is of great importance in data analytics especially because of the exponential growth of real-world data. Often these data are unlabelled and there is little prior domain knowledge available. One challenge in handling these huge data collections is the computational cost. In this paper, we aim to improve the efficiency by introducing a set of methods of agglomerative hierarchical clustering. Instead of building cluster hierarchies based on raw data points, our approach builds a hierarchy based on a group of centroids. These centroids represent a group of adjacent points in the data space. By this approach, feature extraction or dimensionality reduction is not required. To evaluate our approach, we have conducted a comprehensive experimental study. We tested the approach with different clustering methods (i.e., UPGMA and SLINK), data distributions, (i.e., normal and uniform), and distance measures (i.e., Euclidean and Canberra). The experimental results indicate that, using the centroid based approach, computational cost can be significantly reduced without compromising the clustering performance. The performance of this approach is relatively consistent regardless the variation of the settings, i.e., clustering methods, data distributions, and distance measures.
  • Keywords
    Clustering analysis , DATA MINING , data distribution , Coefficient of correlation , Hybrid clustering
  • Journal title
    Expert Systems with Applications
  • Serial Year
    2015
  • Journal title
    Expert Systems with Applications
  • Record number

    2355706