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I am doing a fixed effects regression and am having a problem with autocorrelation, to deal with this I am doing ARIMA modeling using the forecast, lmtest, and PLM packages. My data is general panel data, looks like this, I am trying to do some ARIMA modeling but am having a hard time incorporating autoregressive terms and moving averages into a fixed effects regression using the PLM package. Here is my attempt.

world_hour_fix = plm(WBGDPhour ~ broadband + resourcerents+ education, data = hourframe,       model = "within")


Series: world_hour_fix$residuals 
ARIMA(1,0,1) with zero mean     

      ar1     ma1
      0.403  0.3135
s.e.  0.138  0.1586

sigma^2 estimated as 0.4901:  log likelihood=-175.54
AIC=357.09   AICc=357.23   BIC=366.4


My question is: how do I incorporate one autoregressive term and a moving average of one into my regression?

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I economics, we often don't try to do ARIMA modeling with panel data. Instead, we use (quasi-) difference-in-difference estimation. If you aren't worried about non-stationarity, which it sounds like you aren't, then this paper by Bertrand, Duflo, and Mullainathan, "How Much Should We Trust Differences-in-Differences Estimates?", compares different means of taking autocorrelation into account for panel data. They find that the block bootstrap and HAC standard errors tend to work well.

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