Take the 2-minute tour ×
Stack Overflow is a question and answer site for professional and enthusiast programmers. It's 100% free, no registration required.

I want do fit some sort of multi-variate time series model using R.

Here is a sample of my data:

   u     cci	 bci	 cpi	 gdp	dum1 dum2 dum3	  dx  
 16.50   14.00 	 53.00 	 45.70 	 80.63 	0	0	 1	   6.39 
 17.45   16.00 	 64.00 	 46.30 	 80.90 	0	0	 0	   6.00 
 18.40   12.00 	 51.00 	 47.30 	 82.40 	1	0	 0	   6.57 
 19.35   7.00 	 42.00 	 48.40 	 83.38 	0	1	 0	   5.84 
 20.30   9.00 	 34.00 	 49.50 	 84.38 	0	0	 1	   6.36 
 20.72   10.00 	 42.00 	 50.60 	 85.17 	0	0	 0	   5.78 
 21.14   6.00 	 45.00 	 51.90 	 85.60 	1	0	 0	   5.16 
 21.56   9.00 	 38.00 	 52.60 	 86.14 	0	1	 0	   5.62 
 21.98   2.00 	 32.00 	 53.50 	 86.23 	0	0	 1	   4.94 
 22.78   8.00 	 29.00 	 53.80 	 86.24 	0	0	 0	   6.25

The data is quarterly, the dummy variables are for seasonality.

What I would like to do is to predict dx with reference to some of the others, while (possibly) allowing for seasonality. For argument's sake, lets say I want to use "u", "cci" and "gdp".

How would I go about doing this?

share|improve this question

3 Answers 3

up vote 38 down vote accepted

If you haven't done so already, have a look at the time series view on CRAN, especially the section on multivariate time series.

In finance, one traditional way of doing this is with a factor model, frequently with either a BARRA or Fama-French type model. Eric Zivot's "Modeling financial time series with S-PLUS" gives a good overview of these topics, but it isn't immediately transferable into R. Ruey Tsay's "Analysis of Financial Time Series" (available in the TSA package on CRAN) also has a nice discussion of factor models and principal component analysis in chapter 9.

R also has a number of packages that cover vector autoregression (VAR) models. In particular, I would recommend looking at Bernhard Pfaff's VAR Modelling (vars) package and the related vignette.

I strongly recommend looking at Ruey Tsay's homepage because it covers all these topics, and provides the necessary R code. In particular, look at the "Applied Multivariate Analysis", "Analysis of Financial Time Series", and "Multivariate Time Series Analysis" courses.

This is a very large subject and there are many good books that cover it, including both multivariate time series forcasting and seasonality. Here are a few more:

  1. Kleiber and Zeileis. "Applied Econometrics with R" doesn't address this specifically, but it covers the overall subject very well (see also the AER package on CRAN).
  2. Shumway and Stoffer. "Time Series Analysis and Its Applications: With R Examples" has examples of multivariate ARIMA models.
  3. Cryer. "Time Series Analysis: With Applications in R" is a classic on the subject, updated to include R code.
share|improve this answer
Thanks for making the effort to offer such a detailed answer. –  Karl Nov 12 '09 at 5:44

In the forecast package, try arima(df[,1:4], order=(0,0,0), xreg=df[,6:8]) for forecasting u, cci, gdp.

To predict dx from that, try the VAR model. Here's a good tutorial: http://faculty.washington.edu/ezivot/econ584/notes/varModels.pdf

share|improve this answer

Don't Know if this functionality was available when you first asked this question but this is easily available in base R now with the arima function; just specify your external regressors with the xreg argument within the function. Try ?arima and when you read the documentation pay special attention to the xreg argument. This has been made very easy, good luck.

share|improve this answer

Your Answer


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.