I was able to create a cumulative frequency distribution time basis and create the plot.
breaks = seq(as.Date('2013-01-01'),as.Date('2013-11-07'),by = 1) dates=as.Date(Failures$Event_Date) cum.freq=cbind.data.frame(table(cut.Date(as.Date(dates), as.Date(breaks), right=FALSE))) result=cbind.data.frame(cum.freq,cumsum(cum.freq$Freq)) qplot(x=as.Date(Var1), y=cumsum(cum.freq$Freq), data=result, xlab="Date", ylab="Cumulative Failures", main="Frequency Distribution for failures", alpha=I(.5)) + scale_x_date(breaks = date_breaks("4 weeks"), labels = date_format("%m/%d"))
The object breaks and
cut.Date function allows me to put all data distributed in a time interval and not only based on the sample size. The curve and the trend line are quite different if I do not consider this.
With that restriction I need to use cut or similar function in order to add another variable named
Category to the plot as data series and maybe use group option in
Event_Date Fault_Code Category 06/10/13 NA CAT1 17/05/13 10 CAT2 10/07/13 45 CAT3 11/06/13 15 CAT4 11/06/13 15 CAT4 23/08/13 16 CAT5 25/05/13 1 CAT5 28/10/13 1 CAT5 12/09/13 1 CAT5 05/06/13 NA CAT5 05/06/13 NA CAT5 12/06/13 NA CAT5 21/02/13 10 CAT5 25/06/13 NA CAT5 25/06/13 2 CAT5 17/05/13 2 CAT5
It is possible to use
cut.Date to divide the range of the sample data not only for
Event_Date also for
Another option would be use
dcast() but transpose the
Category after made
cut in order to get all breaks.