35

I want to use the Pandas dataframe to breakdown the variance in one variable.

For example, if I have a column called 'Degrees', and I have this indexed for various dates, cities, and night vs. day, I want to find out what fraction of the variation in this series is coming from cross-sectional city variation, how much is coming from time series variation, and how much is coming from night vs. day.

In Stata I would use Fixed effects and look at the R^2. Hopefully my question makes sense.

Basically, what I want to do, is find the ANOVA breakdown of "Degrees" by three other columns.

6
  • 2
    You'll want to look into scipy or statsmodels (I just added those tags, pending approval)
    – JohnE
    Aug 27 '14 at 23:28
  • 1
    In a nutshell, statsmodels is analogous to the statistical parts of stata (whereas pandas is the data management part).
    – JohnE
    Aug 27 '14 at 23:34
  • Anything more specific :) ? Aug 27 '14 at 23:43
  • 5
    By coincidence just came across the o'reilley book "think stats" which uses pandas and statsmodels. Free online version here: greenteapress.com/thinkstats2/html/index.html
    – JohnE
    Aug 28 '14 at 1:35
  • 1
    There's a complete code example finishing with an ANOVA table and residuals at statsmodels.sourceforge.net/devel/anova.html.
    – cphlewis
    Feb 21 '15 at 6:10
28

I set up a direct comparison to test them, found that their assumptions can differ slightly , got a hint from a statistician, and here is an example of ANOVA on a pandas dataframe matching R's results:

import pandas as pd
import statsmodels.api as sm
from statsmodels.formula.api import ols


# R code on R sample dataset

#> anova(with(ChickWeight, lm(weight ~ Time + Diet)))
#Analysis of Variance Table
#
#Response: weight
#           Df  Sum Sq Mean Sq  F value    Pr(>F)
#Time        1 2042344 2042344 1576.460 < 2.2e-16 ***
#Diet        3  129876   43292   33.417 < 2.2e-16 ***
#Residuals 573  742336    1296
#write.csv(file='ChickWeight.csv', x=ChickWeight, row.names=F)

cw = pd.read_csv('ChickWeight.csv')

cw_lm=ols('weight ~ Time + C(Diet)', data=cw).fit() #Specify C for Categorical
print(sm.stats.anova_lm(cw_lm, typ=2))
#                  sum_sq   df            F         PR(>F)
#C(Diet)    129876.056995    3    33.416570   6.473189e-20
#Time      2016357.148493    1  1556.400956  1.803038e-165
#Residual   742336.119560  573          NaN            NaN
1
  • 2
    But this is not ANOVA test. This is a linear model coefficients analysis.
    – aghd
    Apr 9 '19 at 23:53

Your Answer

By clicking “Post Your Answer”, you agree to our terms of service, privacy policy and cookie policy

Not the answer you're looking for? Browse other questions tagged or ask your own question.