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Performance analysis of adaptive eigenanalysis algorithms

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2 Author(s)
V. Solo ; Dept. of Stat., Macquarie Univ., North Ryde, NSW, Australia ; Xuan Kong

We present a rigorous analysis of several popular forms of short memory adaptive eigenanalysis algorithms using a stochastic averaging method. A first-order analysis shows that the algorithms do not have any equilibrium points despite published claims to the contrary. Through averaging analysis, we show that they hover around an appropriate eigenvector. A second-order analysis is also given without the Gaussian noise assumption, and our results greatly outperform an earlier approximation in the literature. The second-order analysis has been of much interest in the offline study but, in the dynamic adaptive case, is uncommon

Published in:

IEEE Transactions on Signal Processing  (Volume:46 ,  Issue: 3 )