With scipy.stats.linregress I am performing a simple linear regression on some sets of highly correlated x,y experimental data, and initially visually inspecting each x,y scatter plot for outliers. More generally (i.e. programmatically) is there a way to identify and mask outliers?
With the newer version of
Various outlier detection algorithms exist; scikit-learn implements a few of them.
[Disclaimer: I'm a scikit-learn contributor.]
scipy.stats doesn't have anything directly for outliers, so as answer some links and advertising for statsmodels (which is a statistics complement for scipy.stats)
for identifying outliers
instead of masking, a better approach is to use a robust estimator
with examples, where unfortunately the plots are currently not displayed http://statsmodels.sourceforge.net/devel/examples/generated/tut_ols_rlm.html
RLM downweights outliers. The estimation results have a