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Convergence, Tracking, and the LMS Algorithm Step Size 

Barry Van Veen
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The convergence and tracking behavior of the LMS algorithm are dependent on the step size parameter applied to the instantaneous gradient. The various performance tradeoffs involved with selecting a step size parameter are discussed. Small step sizes result in small misadjustment, but can have slow convergence and poor tracking performance. Large step sizes can result in unstable iterations.

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20 июл 2022

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Комментарии : 2   
@taimurchaudhry6135
@taimurchaudhry6135 Год назад
how much should the step size value be ideally, in terms of percentage within the given range of the step-size parameter?
@tuongnguyen9391
@tuongnguyen9391 5 месяцев назад
WHat happen to the website
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