xgboost/tests/python/test_basic.py
jokari69 fb0fc0c580 option to shuffle data in mknfolds (#1459)
* option to shuffle data in mknfolds

* removed possibility to run as stand alone test

* split function def in 2 lines for lint

* option to shuffle data in mknfolds

* removed possibility to run as stand alone test

* split function def in 2 lines for lint
2016-12-23 07:53:30 +08:00

253 lines
9.3 KiB
Python

# -*- coding: utf-8 -*-
import numpy as np
import xgboost as xgb
import unittest
import json
dpath = 'demo/data/'
rng = np.random.RandomState(1994)
class TestBasic(unittest.TestCase):
def test_basic(self):
dtrain = xgb.DMatrix(dpath + 'agaricus.txt.train')
dtest = xgb.DMatrix(dpath + 'agaricus.txt.test')
param = {'max_depth': 2, 'eta': 1, 'silent': 1, 'objective': 'binary:logistic'}
# specify validations set to watch performance
watchlist = [(dtest, 'eval'), (dtrain, 'train')]
num_round = 2
bst = xgb.train(param, dtrain, num_round, watchlist)
# this is prediction
preds = bst.predict(dtest)
labels = dtest.get_label()
err = sum(1 for i in range(len(preds)) if int(preds[i] > 0.5) != labels[i]) / float(len(preds))
# error must be smaller than 10%
assert err < 0.1
# save dmatrix into binary buffer
dtest.save_binary('dtest.buffer')
# save model
bst.save_model('xgb.model')
# load model and data in
bst2 = xgb.Booster(model_file='xgb.model')
dtest2 = xgb.DMatrix('dtest.buffer')
preds2 = bst2.predict(dtest2)
# assert they are the same
assert np.sum(np.abs(preds2 - preds)) == 0
def test_record_results(self):
dtrain = xgb.DMatrix(dpath + 'agaricus.txt.train')
dtest = xgb.DMatrix(dpath + 'agaricus.txt.test')
param = {'max_depth': 2, 'eta': 1, 'silent': 1, 'objective': 'binary:logistic'}
# specify validations set to watch performance
watchlist = [(dtest, 'eval'), (dtrain, 'train')]
num_round = 2
result = {}
res2 = {}
xgb.train(param, dtrain, num_round, watchlist,
callbacks=[xgb.callback.record_evaluation(result)])
xgb.train(param, dtrain, num_round, watchlist,
evals_result=res2)
assert result['train']['error'][0] < 0.1
assert res2 == result
def test_multiclass(self):
dtrain = xgb.DMatrix(dpath + 'agaricus.txt.train')
dtest = xgb.DMatrix(dpath + 'agaricus.txt.test')
param = {'max_depth': 2, 'eta': 1, 'silent': 1, 'num_class': 2}
# specify validations set to watch performance
watchlist = [(dtest, 'eval'), (dtrain, 'train')]
num_round = 2
bst = xgb.train(param, dtrain, num_round, watchlist)
# this is prediction
preds = bst.predict(dtest)
labels = dtest.get_label()
err = sum(1 for i in range(len(preds)) if preds[i] != labels[i]) / float(len(preds))
# error must be smaller than 10%
assert err < 0.1
# save dmatrix into binary buffer
dtest.save_binary('dtest.buffer')
# save model
bst.save_model('xgb.model')
# load model and data in
bst2 = xgb.Booster(model_file='xgb.model')
dtest2 = xgb.DMatrix('dtest.buffer')
preds2 = bst2.predict(dtest2)
# assert they are the same
assert np.sum(np.abs(preds2 - preds)) == 0
def test_dmatrix_init(self):
data = np.random.randn(5, 5)
# different length
self.assertRaises(ValueError, xgb.DMatrix, data,
feature_names=list('abcdef'))
# contains duplicates
self.assertRaises(ValueError, xgb.DMatrix, data,
feature_names=['a', 'b', 'c', 'd', 'd'])
# contains symbol
self.assertRaises(ValueError, xgb.DMatrix, data,
feature_names=['a', 'b', 'c', 'd', 'e<1'])
dm = xgb.DMatrix(data)
dm.feature_names = list('abcde')
assert dm.feature_names == list('abcde')
dm.feature_types = 'q'
assert dm.feature_types == list('qqqqq')
dm.feature_types = list('qiqiq')
assert dm.feature_types == list('qiqiq')
def incorrect_type_set():
dm.feature_types = list('abcde')
self.assertRaises(ValueError, incorrect_type_set)
# reset
dm.feature_names = None
self.assertEqual(dm.feature_names, ['f0', 'f1', 'f2', 'f3', 'f4'])
assert dm.feature_types is None
def test_feature_names(self):
data = np.random.randn(100, 5)
target = np.array([0, 1] * 50)
cases = [['Feature1', 'Feature2', 'Feature3', 'Feature4', 'Feature5'],
[u'要因1', u'要因2', u'要因3', u'要因4', u'要因5']]
for features in cases:
dm = xgb.DMatrix(data, label=target,
feature_names=features)
assert dm.feature_names == features
assert dm.num_row() == 100
assert dm.num_col() == 5
params = {'objective': 'multi:softprob',
'eval_metric': 'mlogloss',
'eta': 0.3,
'num_class': 3}
bst = xgb.train(params, dm, num_boost_round=10)
scores = bst.get_fscore()
assert list(sorted(k for k in scores)) == features
dummy = np.random.randn(5, 5)
dm = xgb.DMatrix(dummy, feature_names=features)
bst.predict(dm)
# different feature name must raises error
dm = xgb.DMatrix(dummy, feature_names=list('abcde'))
self.assertRaises(ValueError, bst.predict, dm)
def test_feature_importances(self):
data = np.random.randn(100, 5)
target = np.array([0, 1] * 50)
features = ['Feature1', 'Feature2', 'Feature3', 'Feature4', 'Feature5']
dm = xgb.DMatrix(data, label=target,
feature_names=features)
params = {'objective': 'multi:softprob',
'eval_metric': 'mlogloss',
'eta': 0.3,
'num_class': 3}
bst = xgb.train(params, dm, num_boost_round=10)
# number of feature importances should == number of features
scores1 = bst.get_score()
scores2 = bst.get_score(importance_type='weight')
scores3 = bst.get_score(importance_type='cover')
scores4 = bst.get_score(importance_type='gain')
assert len(scores1) == len(features)
assert len(scores2) == len(features)
assert len(scores3) == len(features)
assert len(scores4) == len(features)
# check backwards compatibility of get_fscore
fscores = bst.get_fscore()
assert scores1 == fscores
def test_dump(self):
data = np.random.randn(100, 2)
target = np.array([0, 1] * 50)
features = ['Feature1', 'Feature2']
dm = xgb.DMatrix(data, label=target, feature_names=features)
params = {'objective': 'binary:logistic',
'eval_metric': 'logloss',
'eta': 0.3,
'max_depth': 1}
bst = xgb.train(params, dm, num_boost_round=1)
# number of feature importances should == number of features
dump1 = bst.get_dump()
self.assertEqual(len(dump1), 1, "Expected only 1 tree to be dumped.")
self.assertEqual(len(dump1[0].splitlines()), 3,
"Expected 1 root and 2 leaves - 3 lines in dump.")
dump2 = bst.get_dump(with_stats=True)
self.assertEqual(dump2[0].count('\n'), 3,
"Expected 1 root and 2 leaves - 3 lines in dump.")
self.assertGreater(dump2[0].find('\n'), dump1[0].find('\n'),
"Expected more info when with_stats=True is given.")
dump3 = bst.get_dump(dump_format="json")
dump3j = json.loads(dump3[0])
self.assertEqual(dump3j["nodeid"], 0, "Expected the root node on top.")
dump4 = bst.get_dump(dump_format="json", with_stats=True)
dump4j = json.loads(dump4[0])
self.assertIn("gain", dump4j, "Expected 'gain' to be dumped in JSON.")
def test_load_file_invalid(self):
self.assertRaises(xgb.core.XGBoostError, xgb.Booster,
model_file='incorrect_path')
self.assertRaises(xgb.core.XGBoostError, xgb.Booster,
model_file=u'不正なパス')
def test_dmatrix_numpy_init(self):
data = np.random.randn(5, 5)
dm = xgb.DMatrix(data)
assert dm.num_row() == 5
assert dm.num_col() == 5
data = np.matrix([[1, 2], [3, 4]])
dm = xgb.DMatrix(data)
assert dm.num_row() == 2
assert dm.num_col() == 2
# 0d array
self.assertRaises(ValueError, xgb.DMatrix, np.array(1))
# 1d array
self.assertRaises(ValueError, xgb.DMatrix, np.array([1, 2, 3]))
# 3d array
data = np.random.randn(5, 5, 5)
self.assertRaises(ValueError, xgb.DMatrix, data)
# object dtype
data = np.array([['a', 'b'], ['c', 'd']])
self.assertRaises(ValueError, xgb.DMatrix, data)
def test_cv(self):
dm = xgb.DMatrix(dpath + 'agaricus.txt.train')
params = {'max_depth': 2, 'eta': 1, 'silent': 1, 'objective': 'binary:logistic'}
# return np.ndarray
cv = xgb.cv(params, dm, num_boost_round=10, nfold=10, as_pandas=False)
assert isinstance(cv, dict)
assert len(cv) == (4)
def test_cv_no_shuffle(self):
dm = xgb.DMatrix(dpath + 'agaricus.txt.train')
params = {'max_depth': 2, 'eta': 1, 'silent': 1, 'objective': 'binary:logistic'}
# return np.ndarray
cv = xgb.cv(params, dm, num_boost_round=10, shuffle=False, nfold=10, as_pandas=False)
assert isinstance(cv, dict)
assert len(cv) == (4)