Answers ( 2 )

  1. The partial autocorrelation function is a measure of the correlation between observations
    of a time series that are separated by k time units (yt and yt–k), after adjusting for the presence
    of all the other terms of shorter lag (yt–1, yt–2, …, yt–k–1).

    Examine the spikes at each lag to determine whether they are significant.
    A significant spike will extend beyond the significant limits, which indicates
    that the correlation for that lag doesn’t equal zero.

    THE PACF plot helps you in determining the autoregressive component in your ARIMA model,
    which corresponds to ‘p’ in ARIMA(p,d,q) model.

  2. The partial autocorrelation function is a measure of the correlation between observations
    of a time series that are separated by k time units (yt and yt–k), after adjusting for the presence
    of all the other terms of shorter lag (yt–1, yt–2, …, yt–k–1).

    Examine the spikes at each lag to determine whether they are significant.
    A significant spike will extend beyond the significant limits, which indicates
    that the correlation for that lag doesn’t equal zero.

    THE PACF plot helps you in determining the autoregressive component in your ARIMA model,
    which corresponds to ‘p’ in ARIMA(p,d,q) model.

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