Publication | Closed Access
Kernel independent component analysis
561
Citations
37
References
2004
Year
Source SeparationEngineeringMachine LearningData SciencePattern RecognitionReproducing Kernel MethodKnowledge DiscoveryCanonical CorrelationsStatistical InferenceComputer ScienceIndependent Component AnalysisMutual InformationFunctional Data AnalysisStatisticsKernel MethodSignal Separation
We present a class of algorithms for independent component analysis (ICA) which use contrast functions based on canonical correlations in a reproducing kernel Hilbert space. On the one hand, we show that our contrast functions are related to mutual information and have desirable mathematical properties as measures of statistical dependence. On the other hand, building on recent developments in kernel methods, we show that these criteria can be computed efficiently. Minimizing these criteria leads to flexible and robust algorithms for ICA. We illustrate with simulations involving a wide variety of source distributions, showing that our algorithms outperform many of the presently known algorithms.
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