Guo and Ljung (1995) established some general results on exponential stability of random linear equations, which can be applied directly to the performance analysis of a wide class of adaptive algorithms, including the basic LMS ones, without requiring stationarity, independency, and boundedness assumptions of the system signals. The current paper attempts to give a complete characterization of the exponential stability of the LMS algorithms by providing a necessary and sufficient condition for such a stability in the case of possibly unbounded, nonstationary, and non-φ-mixing signals. The results of this paper can be applied to a very large class of signals, including those generated from, e.g., a Gaussian process via a time-varying linear...
We introduce a novel methodology for analysing well known classes of adaptive algorithms. Combining ...
For the well-known LMS adaptive algorithm no general analytic solutions are available for the steady...
For the well-known LMS adaptive algorithm no general analytic solutions are available for the steady...
Guo and Ljung (1995) established some general results on exponential stability of random linear equa...
In a recent work (7), some general results on exponential stability of random linear equations are e...
In a recent work (7), some general results on exponential stability of random linear equations are e...
This work studies the mean-square stability of stochastic gradient algorithms without resorting to s...
Partial updating of LMS filter coefficients is an effective method for reducing the computational lo...
Abstract—For the least mean square (LMS) algorithm, we ana-lyze the correlation matrix of the filter...
Partial updating of LMS filter coefficients is an effective method for reducing computational load a...
Adaptive filters constitute an important part of signal processing. They are widely used in many app...
Abstract — Partial updating of LMS filter coefficients is an effective method for reducing computati...
Adaptive signal processing algorithms derived from LS (least squares) cost functions are known to co...
Shows that the NLMS (normalized least-mean-square) algorithm is a potentially faster converging algo...
For the well-known LMS adaptive algorithm no general analytic solutions are available for the steady...
We introduce a novel methodology for analysing well known classes of adaptive algorithms. Combining ...
For the well-known LMS adaptive algorithm no general analytic solutions are available for the steady...
For the well-known LMS adaptive algorithm no general analytic solutions are available for the steady...
Guo and Ljung (1995) established some general results on exponential stability of random linear equa...
In a recent work (7), some general results on exponential stability of random linear equations are e...
In a recent work (7), some general results on exponential stability of random linear equations are e...
This work studies the mean-square stability of stochastic gradient algorithms without resorting to s...
Partial updating of LMS filter coefficients is an effective method for reducing the computational lo...
Abstract—For the least mean square (LMS) algorithm, we ana-lyze the correlation matrix of the filter...
Partial updating of LMS filter coefficients is an effective method for reducing computational load a...
Adaptive filters constitute an important part of signal processing. They are widely used in many app...
Abstract — Partial updating of LMS filter coefficients is an effective method for reducing computati...
Adaptive signal processing algorithms derived from LS (least squares) cost functions are known to co...
Shows that the NLMS (normalized least-mean-square) algorithm is a potentially faster converging algo...
For the well-known LMS adaptive algorithm no general analytic solutions are available for the steady...
We introduce a novel methodology for analysing well known classes of adaptive algorithms. Combining ...
For the well-known LMS adaptive algorithm no general analytic solutions are available for the steady...
For the well-known LMS adaptive algorithm no general analytic solutions are available for the steady...