Title :
Agglomerative Mean-Shift Clustering
Author :
Yuan, Xiao-Tong ; Hu, Bao-Gang ; He, Ran
Author_Institution :
Dept. of Stat. & Biostat., Rutgers Univ., Piscataway, NJ, USA
Abstract :
Mean-Shift (MS) is a powerful nonparametric clustering method. Although good accuracy can be achieved, its computational cost is particularly expensive even on moderate data sets. In this paper, for the purpose of algorithmic speedup, we develop an agglomerative MS clustering method along with its performance analysis. Our method, namely Agglo-MS, is built upon an iterative query set compression mechanism which is motivated by the quadratic bounding optimization nature of MS algorithm. The whole framework can be efficiently implemented in linear running time complexity. We then extend Agglo-MS into an incremental version which performs comparably to its batch counterpart. The efficiency and accuracy of Agglo-MS are demonstrated by extensive comparing experiments on synthetic and real data sets.
Keywords :
optimisation; pattern clustering; Agglo-MS; agglomerative MS clustering method; agglomerative mean-shift clustering; iterative query set compression mechanism; linear running time complexity; nonparametric clustering method; quadratic bounding optimization; Acceleration; Algorithm design and analysis; Bandwidth; Clustering algorithms; Convergence; Kernel; Optimization; Mean-shift; agglomerative clustering; half-quadratic optimization; incremental clustering.;
Journal_Title :
Knowledge and Data Engineering, IEEE Transactions on
DOI :
10.1109/TKDE.2010.232