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IMPROVED RESULTS ON THE ROBUSTNESS OF STOCHASTIC APPROXIMATION ALGORITHMS

IMPROVED RESULTS ON THE ROBUSTNESS OF STOCHASTIC APPROXIMATION ALGORITHMS
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摘要 This paper is a continuation of the research carried out in [1]-[2], where the robustnessanalysis for stochastic approximation algorithms is given for two cases: 1. The regression functionand the Liapunov function are not zero at the sought-for x^0, 2. lim supnot zero, here {ξ_i} are the measurement errors and {a_n} are the weighting coefficients in thealgorithm. Allowing these deviations from zero to occur simultaneously but to remain small, thispaper shows that the estimation error is still small even for a class fo measurement errors moregeneral than that considered in [2]. This paper is a continuation of the research carried out in [1]-[2], where the robustnessanalysis for stochastic approximation algorithms is given for two cases: 1. The regression functionand the Liapunov function are not zero at the sought-for x~0, 2. lim supnot zero, here {ξ} are the measurement errors and {a} are the weighting coefficients in thealgorithm. Allowing these deviations from zero to occur simultaneously but to remain small, thispaper shows that the estimation error is still small even for a class fo measurement errors moregeneral than that considered in [2].
出处 《Acta Mathematicae Applicatae Sinica》 SCIE CSCD 1992年第2期124-130,共7页 应用数学学报(英文版)
基金 This project is supported by the National Natural Science Foundation of China
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