Is there a way to use na.locf functions to fill in NA values in a cross section (panel) time series data.
I have a panel dataset setup similarly to years of data, setup similarly to the following:
library(zoo) #actual [r] code and data! library(plm) data(Produc) a<-data.frame(Produc) b<-subset(a,state=="WYOMING"|state=="WISCONSIN",select = state:hwy) #limit to an easy subset)
The data has suppression (ie missing values not released by the government data agency) and I'd like to just pull next observations to fill in NA values.
b[[2,4]]<-NA b[[17,4]]<-NA b[[18,3]]<-NA c<-na.locf(b,na.rm=FALSE,fromLast=FALSE)
Using the na.locf function will fill the NA's but nothing will stop it from pulling data incorrectly to fill in a city's last year with the next city's first year data.I am beginning to think that I need to split the dataframe into individual city frames.