I'm trying to perform clustering in Python using Random Forests. In the R implementation of Random Forests, there is a flag you can set to get the proximity matrix. I can't seem to find anything similar in the python scikit version of Random Forest. Does anyone know if there is an equivalent calculation for the python version?
We don't implement proximity matrix in Scikit-Learn (yet).
However, this could be done by relying on the
apply function provided in our implementation of decision trees. That is, for all pairs of samples in your dataset, iterate over the decision trees in the forest (through
forest.estimators_) and count the number of times they fall in the same leaf, i.e., the number of times
apply give the same node id for both samples in the pair.
Hope this helps.
Based on Gilles Louppe answer I have written a function. I don't know if it is effective, but it works. Best regards.
def proximityMatrix(model, X, normalize=True): terminals = model.apply(X) nTrees = terminals.shape a = terminals[:,0] proxMat = 1*np.equal.outer(a, a) for i in range(1, nTrees): a = terminals[:,i] proxMat += 1*np.equal.outer(a, a) if normalize: proxMat = proxMat / nTrees return proxMat from sklearn.ensemble import RandomForestClassifier from sklearn.datasets import load_breast_cancer train = load_breast_cancer() model = RandomForestClassifier(n_estimators=500, max_features=2, min_samples_leaf=40) model.fit(train.data, train.target) proximityMatrix(model, train.data, normalize=True) ## array([[ 1. , 0.414, 0.77 , ..., 0.146, 0.79 , 0.002], ## [ 0.414, 1. , 0.362, ..., 0.334, 0.296, 0.008], ## [ 0.77 , 0.362, 1. , ..., 0.218, 0.856, 0. ], ## ..., ## [ 0.146, 0.334, 0.218, ..., 1. , 0.21 , 0.028], ## [ 0.79 , 0.296, 0.856, ..., 0.21 , 1. , 0. ], ## [ 0.002, 0.008, 0. , ..., 0.028, 0. , 1. ]])
There is nothing currently implemented for this in python. I took a first try at it here. It would be great if somebody would be interested in adding these methods to scikit.