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.

`arima`

: ?`forecast.Arima`

. – Metrics Sep 4 '13 at 23:54