I'm looking for suggestions on how to deal with NA's in linear regressions when all occurrences of an independent/explanatory variable are NA (i.e.
I know the obvious solution would be to exclude the independent/explanatory variable in question from the model but I am looping through multiple regions and would prefer not to have a different functional forms for each region.
Below is some sample data:
set.seed(23409) n <- 100 time <- seq(1,n, 1) x1 <- cumsum(runif(n)) y <- .8*x1 + rnorm(n, mean=0, sd=2) x2 <- seq(1,n, 1) x3 <- rep(NA, n) df <- data.frame(y=y, time=time, x1=x1, x2=x2, x3=x3) # Quick plot of data library(ggplot2) library(reshape2) df.melt <-melt(df, id=c("time")) p <- ggplot(df.melt, aes(x=time, y=value)) + geom_line() + facet_grid(variable ~ .) p
I have read the doccumentation for
lm and tried various
na.action settings without success:
lm(y~x1+x2+x3, data=df, singular.ok=TRUE) lm(y~x1+x2+x3, data=df, na.action=na.omit) lm(y~x1+x2+x3, data=df, na.action=na.exclude) lm(y~x1+x2+x3, data=df, singular.ok=TRUE, na.exclude=na.omit) lm(y~x1+x2+x3, data=df, singular.ok=TRUE, na.exclude=na.exclude)
Is there a way to get lm to run without error and simply return a coefficient for the explanatory reflective of the lack of explanatory power (i.e. either zero or NA) from the variable in question?
Any assistance would be greatly appreciated.