Publication | Open Access
The Fast Convergence of Incremental PCA
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2015
Year
Numerical AnalysisUnknown Covariance AEngineeringData ScienceMatrix AnalysisPattern RecognitionIncremental PcaSampling TheoryInverse ProblemsComputer ScienceDimensionality ReductionEstimation TheoryPrincipal Component AnalysisApproximation TheoryTop EigenvectorRandom MatrixLow-rank ApproximationIncremental Fashion
We consider a situation in which we see samples in $\mathbb{R}^d$ drawn i.i.d. from some distribution with mean zero and unknown covariance A. We wish to compute the top eigenvector of A in an incremental fashion - with an algorithm that maintains an estimate of the top eigenvector in O(d) space, and incrementally adjusts the estimate with each new data point that arrives. Two classical such schemes are due to Krasulina (1969) and Oja (1983). We give finite-sample convergence rates for both.