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I wrote a function and each time running it, I get this error:

Error in eval(expr, envir, enclos) : object 'y' not found

However, if I go through my function and run each line separately, it works. What am I doing wrong? Here is my data:

library(vars)
library(forecast)
data <- ts(matrix(rnorm(144, mean=0, sd=1), ncol=6), start=c(2007,1), frequency=12) 
colnames(data) <- c("a", "b", "c", "d", "e", "f")
factors <- ts(t(t(eigen(cor(data))$vectors[,1:2] %*% 
                       sqrt(diag(eigen(cor(data))$values[1:2]))) %*% 
                     t(scale(data))), start=c(2007,1), frequency=12)
colnames(factors) <- c("f1", "f2")

And my function:

prediction.flex <- function(x, y){
  model <- VAR(x, exogen=y, type="const", ic="FPE")
  factor.fcst <- sapply(y, function(z) predict(auto.arima(z), n.ahead=6))[1,]
  factor.fcst <- cbind(factor.fcst$f1, factor.fcst$f2)
  colnames(factor.fcst) <- colnames(y)
  forecasting <- predict(model, dumvar=factor.fcst, n.ahead=6, ci=0.95)$fcst$a[,1]
  return(forecasting)
}

As I said, when running each line seppeartely using x=data and y=factors, I get the forecast values without an error. However, if I run my function with prediction.flex(data, factors), it tells me that object y wasn't found. Rerunning with debug shows that the line with the forecasting is the problem, even though I just use objects in it, which I generated during the function. I don't understand the error. Do you know where my mistake is?

  • Sorry for that @Pascal. VAR is from the package vars. – nelakell Sep 9 '15 at 8:29
  • When I run your code with your example, forecasting is NULL. – user3710546 Sep 9 '15 at 8:36
  • @Pascal: I edited it. Does it work now? – nelakell Sep 9 '15 at 8:45
  • @Pascal: No, I still get the error. – nelakell Sep 9 '15 at 8:52
  • Good to know @Pascal. That is really strange. I still get the error. Even if the vars and forecast packages are the only one I load. – nelakell Sep 9 '15 at 9:01
1

Here is a possible workaround, assigning y to the global environment:

library(vars)
library(forecast)

set.seed(42)
data <- ts(matrix(rnorm(144, mean=0, sd=1), ncol=6), start=c(2007,1), frequency=12) 
colnames(data) <- c("a", "b", "c", "d", "e", "f")
factors <- ts(t(t(eigen(cor(data))$vectors[,1:2] %*% 
                       sqrt(diag(eigen(cor(data))$values[1:2]))) %*% 
                     t(scale(data))), start=c(2007,1), frequency=12)
colnames(factors) <- c("f1", "f2")
prediction.flex <- function(x, y){
  model <- VAR(x, exogen=y, type="const", ic="FPE")
  # Assigning "y" to the global environment
  assign("y", "y", envir = .GlobalEnv)
  factor.fcst <- sapply(y, function(z) predict(auto.arima(z), n.ahead=6))[1,]
  factor.fcst <- cbind(factor.fcst$f1, factor.fcst$f2)
  colnames(factor.fcst) <- colnames(y)
  forecasting <- predict(model, dumvar=factor.fcst, n.ahead=6, ci=0.95)$fcst$a[,1]
  return(forecasting)
}
out1 <- prediction.flex(data, factors)

x <- data
y <- factors
model <- VAR(x, exogen=y, type="const", ic="FPE")
factor.fcst <- sapply(y, function(z) predict(auto.arima(z), n.ahead=6))[1,]
factor.fcst <- cbind(factor.fcst$f1, factor.fcst$f2)
colnames(factor.fcst) <- colnames(y)
out2 <- predict(model, dumvar=factor.fcst, n.ahead=6, ci=0.95)$fcst$a[,1]

all.equal(out1, out2)
# [1] TRUE

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