I have a dataset of 150 samples and almost 10000 features. I have clustered the samples in 6 clusters. I have used sklearn.feature_selection.RFECV method to reduce the number of features. The method estimate the number of important features 3000 features wit ~95% accuracy using 10-fold CV. However I can get ~ 92% accuracy using around 250 features (I have plotted using grid_scores_). Therefore, I would like to get that 250 features.
I have checked that question Getting features in RFECV scikit-learn and found out to calculate the importances of selected features by:
np.absolute(rfecv.estimator_.coef_)
which returns an array length of number of important features for binary classifications. As i indicated before, i have 6 clusters and sklearn.feature_selection.RFECV does classifiacation 1 vs 1. Therefore i get (15, 3000)
ndarray. I do not know how to proceed. I was thinking to take dot product for each feature like that:
cofs = rfecv.estimator_.coef_
coeffs = []
for x in range(cofs.shape[1]):
vec = cofs[ : , x]
weight = vec.transpose() @ vec
coeffs.append(weight)
And i get array of (1,3000). I can sort these and get the results i want. But i am not sure whether it is right and makes sense. I really appreciate any other solutions.