Add predict_proba test

This commit is contained in:
2022-05-31 23:46:12 +02:00
parent 0a78d5be67
commit 9e8d03d088

View File

@@ -115,6 +115,38 @@ class Stree_test(unittest.TestCase):
yp = clf.fit(X, y).predict(X[:num, :]) yp = clf.fit(X, y).predict(X[:num, :])
self.assertListEqual(y[:num].tolist(), yp.tolist()) self.assertListEqual(y[:num].tolist(), yp.tolist())
def test_multiple_predict_proba(self):
expected = {
"liblinear": {
0: [0.02401129943502825, 0.9759887005649718],
17: [0.9282970550576184, 0.07170294494238157],
},
"linear": {
0: [0.029329608938547486, 0.9706703910614525],
17: [0.9298469387755102, 0.07015306122448979],
},
"rbf": {
0: [0.023448275862068966, 0.976551724137931],
17: [0.9458064516129032, 0.05419354838709677],
},
"poly": {
0: [0.01601164483260553, 0.9839883551673945],
17: [0.9089790897908979, 0.0910209102091021],
},
}
indices = [0, 17]
X, y = load_dataset(self._random_state)
for kernel in ["liblinear", "linear", "rbf", "poly"]:
clf = Stree(
kernel=kernel,
multiclass_strategy="ovr" if kernel == "liblinear" else "ovo",
random_state=self._random_state,
)
yp = clf.fit(X, y).predict_proba(X)
for index in indices:
for exp, comp in zip(expected[kernel][index], yp[index]):
self.assertAlmostEqual(exp, comp)
def test_single_vs_multiple_prediction(self): def test_single_vs_multiple_prediction(self):
"""Check if predicting sample by sample gives the same result as """Check if predicting sample by sample gives the same result as
predicting all samples at once predicting all samples at once