Title :
Optimized Data Fusion for Kernel k-Means Clustering
Author :
Yu, Shi ; Tranchevent, Léon-Charles ; Liu, Xinhai ; Glänzel, Wolfgang ; Suykens, Johan A K ; De Moor, Bart ; Moreau, Yves
Author_Institution :
Dept. of Med., Univ. of Chicago, Chicago, IL, USA
fDate :
5/1/2012 12:00:00 AM
Abstract :
This paper presents a novel optimized kernel k-means algorithm (OKKC) to combine multiple data sources for clustering analysis. The algorithm uses an alternating minimization framework to optimize the cluster membership and kernel coefficients as a nonconvex problem. In the proposed algorithm, the problem to optimize the cluster membership and the problem to optimize the kernel coefficients are all based on the same Rayleigh quotient objective; therefore the proposed algorithm converges locally. OKKC has a simpler procedure and lower complexity than other algorithms proposed in the literature. Simulated and real-life data fusion applications are experimentally studied, and the results validate that the proposed algorithm has comparable performance, moreover, it is more efficient on large-scale data sets. (The Matlab implementation of OKKC algorithm is downloadable from http://homes.esat.kuleuven.be/~sistawww/bio/syu/okkc.html.).
Keywords :
computational complexity; concave programming; minimisation; pattern clustering; sensor fusion; Rayleigh quotient objective; algorithm complexity; alternating minimization framework; cluster membership optimization; clustering analysis; data fusion; kernel coefficient optimization; nonconvex problem; optimized kernel k-means clustering algorithm; Algorithm design and analysis; Clustering algorithms; Complexity theory; Hilbert space; Kernel; Partitioning algorithms; Support vector machines; Clustering; Fisher discriminant analysis; data fusion; least-squares support vector machine.; multiple kernel learning;
Journal_Title :
Pattern Analysis and Machine Intelligence, IEEE Transactions on
DOI :
10.1109/TPAMI.2011.255