I'm training ML models from SKLearn in Python, and sometimes need to export them as text (as mathematical equations).
When doing linear regression it is fairly simple: I take the target's name (
T), the coefficients (
C1...Cn), the intercept (
C0), and the features' names (
A1...An) to construct a string in the form:
T = C0 + C1A1 + C2A2 + ... + CnAn
I'm not sure, however, about my implementation for classification algorithms.
For example, let's say I have a Logistic Regression classifier trained to use n features (
A1, ..., An) to classify between m classes (
T1, ..., Tm).
If I understand correctly, I can take the coefficients and intercepts from the classifier (
j=0,1,...,n) to write the following set:
f(T1) = C10 + C11A1 + C12A2 + ... + C1nAn . . . f(Tm) = Cm0 + Cm1A1 + Cm2A2 + ... + CmnAn
Than the class to be picked is the one whose function yields the largest number.
Is this formulation correct?