# Screening (multi)collinearity in a regression model

I hope that this one is not going to be "ask-and-answer" question... here goes: (multi)collinearity refers to extremely high correlations between predictors in the regression model. How to cure them... well, sometimes you don't need to "cure" collinearity, since it doesn't affect regression model itself, but interpretation of an effect of individual predictors.

One way to spot collinearity is to put each predictor as a dependent variable, and other predictors as independent variables, determine R2, and if it's larger than .9 (or .95), we can consider predictor redundant. This is one "method"... what about other approaches? Some of them are time consuming, like excluding predictors from model and watching for b-coefficient changes - they should be noticeably different.

Of course, we must always bear in mind the specific context/goal of the analysis... Sometimes, only remedy is to repeat a research, but right now, I'm interested in various ways of screening redundant predictors when (multi)collinearity occurs in a regression model.

• I'm very pleased that no one marked this as not "programmy" enough and many people up voted this. This is a very good question that many of us who "program with data" struggle with. – JD Long Jun 15 '10 at 17:04
• Great question, and wonderful answers. A very rewarding read - thank you. – Tal Galili Jun 15 '10 at 17:12
• Credits should go to friend of mine... she asked me about collinearity, and after searching topics on SO, I figured out that there are no questions about it... which was quite odd, since the collinearity problem is mundane in statistical analysis. Thank you lads for these great answers! – aL3xa Jun 15 '10 at 21:07
• Great stuff guys, I really appreciate seeing an R community spring up here at SO. – Pierreten Jun 16 '10 at 17:07
• This question appears to be off-topic because it is about statistical practice. It should be migrated to CrossValidated (which didn't exist when the question was originally asked ...) – Ben Bolker Dec 31 '13 at 23:08

The kappa() function can help. Here is a simulated example:

> set.seed(42)
> x1 <- rnorm(100)
> x2 <- rnorm(100)
> x3 <- x1 + 2*x2 + rnorm(100)*0.0001    # so x3 approx a linear comb. of x1+x2
> mm12 <- model.matrix(~ x1 + x2)        # normal model, two indep. regressors
> mm123 <- model.matrix(~ x1 + x2 + x3)  # bad model with near collinearity
> kappa(mm12)                            # a 'low' kappa is good
 1.166029
> kappa(mm123)                           # a 'high' kappa indicates trouble
 121530.7


and we go further by making the third regressor more and more collinear:

> x4 <- x1 + 2*x2 + rnorm(100)*0.000001  # even more collinear
> mm124 <- model.matrix(~ x1 + x2 + x4)
> kappa(mm124)
 13955982
> x5 <- x1 + 2*x2                        # now x5 is linear comb of x1,x2
> mm125 <- model.matrix(~ x1 + x2 + x5)
> kappa(mm125)
 1.067568e+16
>


This used approximations, see help(kappa) for details.

Just to add to what Dirk said about the Condition Number method, a rule of thumb is that values of CN > 30 indicate severe collinearity. Other methods, apart from condition number, include:

1) the determinant of the covariance matrix which ranges from 0 (Perfect Collinearity) to 1 (No Collinearity)

# using Dirk's example
> det(cov(mm12[,-1]))
 0.8856818
> det(cov(mm123[,-1]))
 8.916092e-09


2) Using the fact that the determinant of a diagonal matrix is the product of the eigenvalues => The presence of one or more small eigenvalues indicates collinearity

> eigen(cov(mm12[,-1]))$values  1.0876357 0.8143184 > eigen(cov(mm123[,-1]))$values
 5.388022e+00 9.862794e-01 1.677819e-09


3) The value of the Variance Inflation Factor (VIF). The VIF for predictor i is 1/(1-R_i^2), where R_i^2 is the R^2 from a regression of predictor i against the remaining predictors. Collinearity is present when VIF for at least one independent variable is large. Rule of Thumb: VIF > 10 is of concern. For an implementation in R see here. I would also like to comment that the use of R^2 for determining collinearity should go hand in hand with visual examination of the scatterplots because a single outlier can "cause" collinearity where it doesn't exist, or can HIDE collinearity where it exists.

• Thanks Γιώργος, +2 for this one! Great answer! – aL3xa Jun 15 '10 at 16:50
• why would the determinant of the covariance matrix be capped at 1?? – kevinykuo Feb 24 '14 at 20:24
• blog.exploratory.io/… – George Dontas Nov 24 '19 at 6:07

You might like Vito Ricci's Reference Card "R Functions For Regression Analysis" http://cran.r-project.org/doc/contrib/Ricci-refcard-regression.pdf

It succinctly lists many useful regression related functions in R including diagnostic functions. In particular, it lists the vif function from the car package which can assess multicollinearity. http://en.wikipedia.org/wiki/Variance_inflation_factor

Consideration of multicollinearity often goes hand in hand with issues of assessing variable importance. If this applies to you, perhaps check out the relaimpo package: http://prof.beuth-hochschule.de/groemping/relaimpo/

• Technically, and arithmetically, VIF = 1(1 - R^2), where R^2 refers to example I stated in my question. I forgot to mention VIF, so thanks for helping on this one! relaimpo is a great find! – aL3xa Jun 15 '10 at 11:41

See also Section 9.4 in this Book: Practical Regression and Anova using R [Faraway 2002].

Collinearity can be detected in several ways:

1. Examination of the correlation matrix of the predictors will reveal large pairwise collinearities.

2. A regression of x_i on all other predictors gives R^2_i. Repeat for all predictors. R^2_i close to one indicates a problem — the offending linear combination may be found.

3. Examine the eigenvalues of t(X) %*% X, where X denotes the model matrix; Small eigenvalues indicate a problem. The 2-norm condition number can be shown to be the ratio of the largest to the smallest non-zero singular value of the matrix ($\kappa = \sqrt{\lambda_1/\lambda_p}$; see ?kappa); \kappa >= 30 is considered large.

Since there is no mention of VIF so far, I will add my answer. Variance Inflation Factor>10 usually indicates serious redundancy between predictor variables. VIF indicates the factor by which variance of the co-efficient of a variable would increase if it was not highly correlated with other variables.

vif() is available in package cars and applied to an object of class(lm). It returns the vif of x1, x2 . . . xn in object lm(). It is a good idea to exclude variables with vif >10 or introduce transformations to the variables with vif>10.