Title of article
Oja’s algorithm for graph clustering, Markov spectral decomposition, and risk sensitive control
Author/Authors
Borkar، نويسنده , , V. and Meyn، نويسنده , , S.P.، نويسنده ,
Issue Information
روزنامه با شماره پیاپی سال 2012
Pages
8
From page
2512
To page
2519
Abstract
Given a positive definite matrix M and an integer N m ≥ 1 , Oja’s subspace algorithm will provide convergent estimates of the first N m eigenvalues of M along with the corresponding eigenvectors. It is a common approach to principal component analysis. This paper introduces a normalized stochastic-approximation implementation of Oja’s subspace algorithm, as well as new applications to the spectral decomposition of a reversible Markov chain. Recall that this means that the stationary distribution satisfies the detailed balance equations (Meyn & Tweedie, 2009). Equivalently, the statistics of the process in steady state do not change when time is reversed. Stability and convergence of Oja’s algorithm are established under conditions far milder than that assumed in previous work. Applications to graph clustering, Markov spectral decomposition, and multiplicative ergodic theory are surveyed, along with numerical results.
Keywords
graph algorithms , Oja’s algorithm , Markov chains , Stochastic approximation , Spectral theory of Markov chains , Multiplicative ergodic theory , Risk sensitive control
Journal title
Automatica
Serial Year
2012
Journal title
Automatica
Record number
1448868
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