Ignoring missing values in multiple OLS regression with statsmodels

user2649353 picture user2649353 · Mar 6, 2014 · Viewed 14.3k times · Source

I'm trying to run a multiple OLS regression using statsmodels and a pandas dataframe. There are missing values in different columns for different rows, and I keep getting the error message: ValueError: array must not contain infs or NaNs I saw this SO question, which is similar but doesn't exactly answer my question: statsmodel.api.Logit: valueerror array must not contain infs or nans

What I would like to do is run the regression and ignore all rows where there are missing variables for the variables I am using in this regression. Right now I have:

import pandas as pd
import numpy as np
import statsmodels.formula.api as sm

df = pd.read_csv('cl_030314.csv')

results = sm.ols(formula = "da ~ cfo + rm_proxy + cpi + year", data=df).fit()

I want something like missing = "drop". Any suggestions would be greatly appreciated. Thanks so much.

Answer

jseabold picture jseabold · Mar 6, 2014

You answered your own question. Just pass

missing = 'drop'

to ols

import statsmodels.formula.api as smf
...
results = smf.ols(formula = "da ~ cfo + rm_proxy + cpi + year", 
                 data=df, missing='drop').fit()

If this doesn't work then it's a bug and please report it with a MWE on github.

FYI, note the import above. Not everything is available in the formula.api namespace, so you should keep it separate from statsmodels.api. Or just use

import statsmodels.api as sm
sm.formula.ols(...)