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I am at a lost in trying to figure out the logic of how to get predictions using new data passed to predict.lm using plyr in place of a loop. Can anyone help? Example:

Because I am new to r and not a highly skilled programmer, my code will be painfully inefficient. Stackflow community: Thanks for the suggestions to create fake code of the problem. I am hoping this will help me solve this headache.

My goal is to make predictions on a new validation dataset using the coefficients from model built on training dataset. I will eventually be building an ARIMA as well as a linear model once I can get help solving the problem. I am building 24 regression models. One model for each hour of the day. My training data would be 90 days and my validation data would be 31 days.

Creating Some Data

require(plyr)
# setting up some fake data
set.seed(31)
foo <- function(myHour, myDate){
   rlnorm(1, meanlog=0,sdlog=1)*(myHour) + (150*myDate) 
}
Hour <- 1:24
Day <-1:90
dates <-seq(as.Date("2012-01-01"), as.Date("2012-3-30"), by = "day")
myData <- expand.grid( Day, Hour)
names(myData) <- c("Date","Hour")

myData$Adspend <- apply(myData, 1, function(x) foo(x[2], x[1]))
myData$Date <-dates

myData$Demand <-(rnorm(1,mean = 0, sd=1)+.75*myData$Adspend)
## ok, done with the fake data generation. 

myData

#Run regression on training data
FIT <- dlply(myData, "Hour", function(x) lm(x[,4] ~ x[,3], data=x))

# Create new fake validation dataset (31days)
Hour <- 1:24
Day <- 1:31
dates <-seq(as.Date("2012-03-31"), as.Date("2012-4-30"), by = "day")

newData <- expand.grid( Day, Hour)
names(newData) <- c("Date","Hour")
set.seed(310)

fooNew <- function(myHour, myDate){
   rlnorm(1, meanlog=0,sdlog=1)*5*(myHour) + (300*myDate) 
}

newData$AdspendNew <- apply(newData, 1, function(x) fooNew(x[2], x[1]))
newData$Date <-dates

I then try to make predictions of Demand using the New values for Adspend

NewDatabyHour <-dlply(newData,"Hour")

PREDFIT <-mdply(cbind(mod=FIT, df=NewDatabyHour), function(mod,df) {
    transform(df, pred=predict(mod,df))})

The error I am now getting is the following:

Error in data.frame(list(Date = c(15430, 15431, 15432, 15433, 15434, 15435,  : 
  arguments imply differing number of rows: 31, 90
In addition: Warning message:
'newdata' had 31 rows but variables found have 90 rows 

My Question is: How do I make predictions on new data in which the new data has less observations than the training data? My second question is: Is the process the same for auto.arima as for LM()?

Thank you again for any help.

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I suggest you to look into forecast package to use forecast for arima: ?forecast.Arima. –  Metrics Sep 4 '13 at 23:54

1 Answer 1

Your problem arises in the way you are constructing your formula and then not having consistent names in the newdata argument to predict.lm (also mdply is not really what you want here)

predict.lm will look for objects in newdata that have the same names as the terms in your model object. Your current defintion has x[,4] as your 'x' term.

Instead, use the names, i.e.

 FIT <- dlply(myData, "Hour", function(x) lm(Demand ~ Adspend, data=x))

Now when you create newData, continue to use the name Adspend

 newData$Adspend <- apply(newData, 1, function(x) fooNew(x[2], x[1]))

Now you can use Map (which is a wrapper for mapply, a base R function not plyr) to move through FIT and NewDatabyHour to do your predictions (and combine with the new data

predicted <-  Map(object = FIT, newdata = NewDatabyHour, 
                           f = function(object,newdata) {
                             newdata$predicted = predict(object, newdata)
                             newdata})

# combine into whole data frame again
predDF <- rbind.fill(predicted)

Another (entirely) different approach would be to use nlme lmList

Data is partitioned according to the levels of the grouping factor g and individual lm fits are obtained for each data partition, using the model defined in object.

library(nlme)
# fit the model to each subset
FITS <- lmList(Demand ~ Adspend | Hour, data = myData)
# make the predictions
newData$predicted <- predict(FITS, newdata = newData)

(Please note that these regression models are almost certainly not the best way to analyse these data !)

share|improve this answer
    
Thank you so much mnel. Could also recommend the right approach and I will research it. Thanks again –  Reginald Roberts Sep 5 '13 at 1:48
    
Oh by the way, I am going to be using a rational distributed lag in the final model, right now I am just trying to get a loop that works on a basic model. –  Reginald Roberts Sep 5 '13 at 1:51
    
You solved my problem I am forever grateful –  Reginald Roberts Sep 5 '13 at 2:04

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