I'm working in python stack (scipy/numpy/pandas) and I need to do a linear fit on a list of (x,y) points that have added noise from some distribution conditioned on x and other global properties. Are any specific methods available to measure and visualize the levels of heteroscedasticity in my data?

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    You can ask for some statistics help at Cross Validated too! Here's the link: stats.stackexchange.com – dot.Py Feb 10 '16 at 19:11
  • In fact, that may be the better place to ask. This question is out of scope for SO. – Mad Physicist Feb 10 '16 at 19:11
  • I asked a few questions there before, never got any responses. @MadPhysicist – M.R. Feb 10 '16 at 21:29

Some of the tests listed on the Wikipedia page for Heteroscedasticity can be found in the scipy.stats package. Under the circumstances, the statsmodels package (which is built on top of scipy) may be a better bet. There is an entire module dedicated to Heteroscedasticity tests.

  • Thanks! I'll check out that package, what about fitting a distribution on the residuals, I'm new to these libraries, is there an optimal tool? – M.R. Feb 10 '16 at 21:31
  • Probably scipy.optimize? Also, I am sure that there is some scikit that does what you want (statsmodels is a scikit). – Mad Physicist Feb 10 '16 at 21:39

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