Publication | Closed Access
Learning a kernel matrix for nonlinear dimensionality reduction
519
Citations
14
References
2004
Year
Unknown Venue
EngineeringMachine LearningManifold ModelingKernel MatrixImage AnalysisData ScienceData MiningPattern RecognitionMachine VisionManifold LearningKnowledge DiscoveryDifferent KernelsDimensionality ReductionDeep LearningMedical Image ComputingFunctional Data AnalysisNonlinear Dimensionality ReductionComputer VisionGaussian KernelsReproducing Kernel MethodKernel Method
We investigate how to learn a kernel matrix for high dimensional data that lies on or near a low dimensional manifold. Noting that the kernel matrix implicitly maps the data into a nonlinear feature space, we show how to discover a mapping that "unfolds" the underlying manifold from which the data was sampled. The kernel matrix is constructed by maximizing the variance in feature space subject to local constraints that preserve the angles and distances between nearest neighbors. The main optimization involves an instance of semidefinite programming---a fundamentally different computation than previous algorithms for manifold learning, such as Isomap and locally linear embedding. The optimized kernels perform better than polynomial and Gaussian kernels for problems in manifold learning, but worse for problems in large margin classification. We explain these results in terms of the geometric properties of different kernels and comment on various interpretations of other manifold learning algorithms as kernel methods.
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