4.8 Article

Optimized Data Fusion for Kernel k-Means Clustering

Journal

Publisher

IEEE COMPUTER SOC
DOI: 10.1109/TPAMI.2011.255

Keywords

Clustering; data fusion; multiple kernel learning; Fisher discriminant analysis; least-squares support vector machine

Funding

  1. Research Council KUL: ProMeta, GOA Ambiorics, GOA MaNet, START 1, Optimization in Engineering (OPTEC), IOF-SCORES4CHEM [CoEEF/05/006, PFV/10/016]
  2. FWO: research communities (ICCoS, ANMMM, MLDM) [G.0302.07, G.0318.05, G.0553.06, G.0733.09, G.082409]
  3. IWT: Eureka-Flite+, Silicos
  4. SBOBioFrame, SBO-MoKa, SBO LeCoPro, SBO Climaqs, SBO POM, TBM-IOTA3, OO-Dsquare
  5. Belgian Federal Science Policy Office [IUAP P6/25, 2007C2011, IUAP P6/04]
  6. FOD: Cancer plans
  7. the Centre for R&D Monitoring of the Flemish Government
  8. EU-RTD: ERNSI: European Research Network on System Identification
  9. FP7-HEALTH CHeartED
  10. FP7-HD-MPC, COST intelli-CIS, FP7-EMBOCON [INFSO-ICT-223854, ICT-248940]

Ask authors/readers for more resources

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/similar to sistawww/bio/syu/okkc.html.)

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