Is there a way to incorporate smoothing function for an auto-correlated time series in ggplot2?
I have time series data that is auto-correlated for which I currently use a manual process to determine 95% CI for the fitted spline.
Usage and Date are in a data frame AB. The main components of the model I use are as follows:
d<-AB$Date a<-AB$Usage o<-order(d) d<-d[o] a<-a[o] id<-ts(1:length(d)) a1<-ts(a) a2<-lag(a1-1) tg<-ts.union(a1,id,a2) mg<-lm(a1~a2+bs(id,df=df1), data=tg)
From this model I obtain fitted means and standard errors of the fit which are used to work out the 95% CI for the fitted spline.
I have seen examples of the lm method in ggplot2 with a term to specify the model formula. Is this kind of time series model achievable when the time series is auto-correlated?