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I have two data files "train.txt' and 'test.txt' with single columns of data. I want to learn a model only on training-data and generate an output on test-data. I can't seem to find a way to do that. Most predict invocations seem to be just starting from the end of training data. I have always been c++ heavy, and am just learning R. I tried the forecast package in R.

train_data_ <- read.table ('train.txt');
train_data_ <- as.matrix ( train_data_ );

test_data_ <- read.table ('test.txt');
test_data_ <- as.matrix ( test_data_ );

fit_train_ <- ets(ts(train_data_));
fit_test_ <- ets(ts(test_data_),model=fit_train_);
onestep <-fitted ( fit_test_ );
fit_test10_ <- ets(ts (test_data_[1:10], model=fit_train_);
onestep10 <-fitted ( fit_test10_ );
head (onestep10); # print 10 lines
head (onestep); # prints 10 lines
# These are different.

This fails my goal of predicting the next step in test data in a way that the future testing data does not affect the prediction. Just to explain what I mean by not looking into the future for prediction this link might help : Problem Description

share|improve this question
check the caret package website for a worked example: caret.r-forge.r-project.org/training.html. The general pattern is to 1) split dat into train and test, 2) do a round of CV and/or model selection with the train data 3) take the best model and predict on the test data. It's maybe all the examples spend a lot of time on step 2 that are confusing you.. whilst you are correct step3 is the ultimate goal. –  Stephen Henderson Dec 17 '13 at 17:29

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