Stack Overflow is a community of 4.7 million programmers, just like you, helping each other.

Join them; it only takes a minute:

Sign up
Join the Stack Overflow community to:
  1. Ask programming questions
  2. Answer and help your peers
  3. Get recognized for your expertise

Sample data:

var1 <- matrix(sample(c(NA, 1:3), 10, replace = TRUE), 10,1)
var2 <- matrix(sample(c(NA, 1:3), 10, replace = TRUE), 10,1)
var3 <- matrix(sample(c(NA, 1:3), 10, replace = TRUE), 10,1)
var4 <- matrix(sample(c(NA, 1:3), 10, replace = TRUE), 10,1)
var5 <- matrix(sample(c(NA, 1:3), 10, replace = TRUE), 10,1)

NewDataframe <- as.data.frame(cbind(var1,var2,var3,var4,var5))
names(NewDataframe) <- c("var1","var2","var3","var4","var5")

NewDataframe[is.na(NewDataframe)] <- ""

vector of data:

par1 <- data.frame(var1=2,var3=5,var4=3)
par2 <- data.frame(var2=4,var5=7)

Pre-multiply each row of newdataframe with the correct par variables var1 atc. Rows where par1 or par2 would not apply is left blank. How to approach this? Thanks.

share|improve this question
    
If I understand correctly you have two models: preferred but with more variables (and higher likelihood of NA), and less detailed (but more robust to NA). You want to selectively pick estimates, preferring the first model, an using the second in case it can't get an estimate. Is that correct? – ilir May 2 '14 at 8:31
    
Yes that's correct. I'm about to simplify my question. Hope I get it right and right to the point this time! – Maximilian May 2 '14 at 9:49
up vote 1 down vote accepted

I have simplified some of your code to use predict() as a much handier alternative to doing the matrix multiplication yourself.

dataframe <- data.frame(y=rbinom(100,2,0.4),var1=rnorm(100,2,2),var2=rnorm(100,3,4),var3=rnorm(100,4,5),var4=rnorm(100,5,6),var5=rnorm(100,30,3))

model1 <- lm(y~var1+var3, data=dataframe)
model2 <- lm(y~var2+var4+var5, data=dataframe)

var1 <- matrix(sample(c(NA, 1:3), 100, replace = TRUE), 100,1)
var2 <- matrix(sample(c(NA, 1:3), 100, replace = TRUE), 100,1)
var3 <- matrix(sample(c(NA, 1:3), 100, replace = TRUE), 100,1)
var4 <- matrix(sample(c(NA, 1:3), 100, replace = TRUE), 100,1)
var5 <- matrix(sample(c(NA, 1:3), 100, replace = TRUE), 100,1)

NewDataframe <- as.data.frame(cbind(var1,var2,var3,var4,var5))
names(NewDataframe) <- c("var1","var2","var3","var4","var5")

Use complete.cases() to identify rows that have no NAs and would produce a viable estimate

m1.ids <- with(NewDataframe, complete.cases(var1, var3))

Make two vectors, one using model1 for the rows that have no NAs in the relevant columns, and another using model2 for all the rest.

y.hat1 <- predict(model1, newdata=NewDataframe[m1.ids, ])
y.hat2 <- predict(model2, newdata=NewDataframe[!m1.ids, ])

Use the index to match the estimates to their respective rows.

NewDataframe <- rbind(data.frame(NewDataframe[m1.ids,], y.hat=y.hat1),
                      data.frame(NewDataframe[!m1.ids,], y.hat=y.hat2))

Alternatively, you can generate a full vector of estimates with each model, and use ifelse() to choose values from the second if the first is NA. That could look cleaner if your data is not big, but would produce redundant estimates.

share|improve this answer

Your Answer

 
discard

By posting your answer, you agree to the privacy policy and terms of service.

Not the answer you're looking for? Browse other questions tagged or ask your own question.