See: What is the best way to identify outliers in multivariate data?
I am trying to do a regression problem but I have 3 independent variables and not 1 so it is hard to detect outliers from a scatter graph. Any suggestions?
I am trying to do a regression problem but I have 3 independent variables and not 1 so it is hard to detect outliers from a scatter graph. Any suggestions? 

closed as off topic by Bill the Lizard Sep 28 '11 at 16:53Questions on Stack Overflow are expected to relate to programming within the scope defined by the community. Consider editing the question or leaving comments for improvement if you believe the question can be reworded to fit within the scope. Read more about reopening questions here.If this question can be reworded to fit the rules in the help center, please edit the question. 


The proximities computed by random forests can be used to detect outliers. The basic idea is that we identify an outlier by how far away it is from all other observations belonging to its class in the learning set. Check the outlier function in the randomForest package. 


The simplest thing, for starters, is to compute the leverage for all datapoints, see http://en.wikipedia.org/wiki/Partial%5Fleverage and look for especially influential observations (those that have high leverage). R provides a wealth of diagnostic plots when you plot a regression object, but you might need to read into some book on robust estimation to take full advantage of those. 


Why not just create three univariate scatter plots? Or else use a robust regression model? A similar question was ask with respect to automated outlier detection using "R", which is also worth reviewing. 

