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Autoregressive Models The Yule Walker Equations

February 2, 2019 by 3200 Creative

Autoregressive Models The Yule Walker Equations

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  1. Question 1 of 4
    1. Question

    The Yule-Walker equations relate which sets of parameters describing a wide-sense stationary random process?

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  2. Question 2 of 4
    2. Question

    The Yule-Walker equations are a system of nonlinear equations involving the autoregressive model parameters.

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  3. Question 3 of 4
    3. Question

    The Yule-Walker equations assume the order of the autoregressive model is given.

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  4. Question 4 of 4
    4. Question

    The MATLAB function “aryule” uses a given time series or signal to estimate the autocovariance of the random process generating the signal and then solves for the autoregressive model parameters.

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