# How to test all possible iterations in a multiple linear regresion and return the best R-Squared and P values combination

I am trying to get the best combination to reach the best R Squared and P value. In this case, I have 6 columns to run the code, but I have the R-Squared and P values just for this combo ([col0, col1, col2, col3, col4, col5] vs [col6]). I want to test all the possible combinations, something like:

[col0] vs [col6]

[col0 + col1] vs [col6]

[col0 + col1 + col2] vs [col6]...

Is there any way to automatize this? So I dont have to run all possible combinations on hand.

import statsmodels.api as sm
from sklearn import linear_model

X = df_norm[["col0",
"col1",
"col2",
"col3",
"col4",
"col5"]]

y = df_norm["col6"]

import statsmodels.api as sm
# with statsmodels

model = sm.OLS(y, X).fit()

print_model = model.summary()

• I think you can pull out the value of R-squared and P-value from sklearn. when you pull out the value, run a number of iteration of 50 or 100 depending on your choice. then, compare the previous value of r-squared and value if they are greater than the current value. lastly, save it on pickle and just load the pickle that has the highest value based on your simulation. Commented Jun 15, 2021 at 20:04
• On my real database I have 230 columns. Can you give me an example of a code to make the iteration? Commented Jun 15, 2021 at 20:07
• You don't want to iterate over all possible combinations if you have 230 columns. That's a total of 2**230 combinations. You should figure out a better filter. Commented Jun 15, 2021 at 20:13

What you're looking to implement is the powerset function shown in the iterools documentation:

from itertools import chain, combinations

def powerset(iterable):
#"powerset([1,2,3]) --> () (1,) (2,) (3,) (1,2) (1,3) (2,3) (1,2,3)"
s = list(iterable)
return chain.from_iterable(combinations(s, r) for r in range(len(s)+1))

Then you could iterate over each subset of your columns and process the results as needed. Your loop would be something like:

for subset in powerset(X.columns):
if len(subset) > 0:
model = sm.OLS(y, X[list(subset)]).fit()
• Do I have to change this numbers to my columns names? "powerset([1,2,3]) --> () (1,) (2,) (3,) (1,2) (1,3) (2,3) (1,2,3)" With my code, its returning me: ValueError: zero-size array to reduction operation maximum which has no identity Commented Jun 15, 2021 at 20:27
• No that's just a comment. Commented Jun 15, 2021 at 20:28
• import pandas from sklearn import linear_model X = df_norm[["col0", "col1", "col2", "col3", "col4", "col5",]] y = df_norm["col6"] from itertools import chain, combinations def powerset(iterable): "powerset([1,2,3]) --> () (1,) (2,) (3,) (1,2) (1,3) (2,3) (1,2,3)" s = list(iterable) return chain.from_iterable(combinations(s, r) for r in range(len(s)+1)) import statsmodels.api as sm # with statsmodels X = sm.add_constant(X) # adding a constant for subset in powerset(X.columns): model = sm.OLS(y, X[list(subset)]).fit() print(print_model) Commented Jun 15, 2021 at 20:30
• I ran that code /\ and Its returning me: ValueError: zero-size array to reduction operation maximum which has no identity Commented Jun 15, 2021 at 20:31
• Edited - but please try to do the basic debugging yourself. The error is self explanatory. Commented Jun 15, 2021 at 20:33