示例#1
0
文件: test.py 项目: grantbrown/XBART
	def setUp(self):
		self.params = {"num_trees":5,"num_sweeps":2,"num_cutpoints":10,
						"max_depth_num":5,"burnin":1}
		self.model = xbart.XBART(**self.params)
		self.model_2 = xbart.XBART(**self.params)
		n = 100
		self.x = np.random.rand(n)
示例#2
0
文件: test.py 项目: grantbrown/XBART
	def test_z_from_json(self):
		model = xbart.XBART()
		model.from_json("model.xbart")
		n_test = 1000; d = 10
		x_test= np.random.rand(n_test,d)
		y_pred_json = model.predict(x_test,return_mean=False)
		self.assertFalse(np.array_equal(y_pred_json,y_pred_json*0))
示例#3
0
文件: test.py 项目: jgibson2/XBART
	def test_dimension_mismatch_x_y(self):
		with self.assertRaises(AssertionError):
			x,x_test,y,y_test,d = self.make_data()

			# Make y not match x
			y = np.concatenate((y,y))

			model = xbart.XBART(model="Probit",**self.params)
			model.fit(x,y,d-1)
示例#4
0
文件: test.py 项目: jgibson2/XBART
	def test_dimension_mismatch_x_x(self):
		with self.assertRaises(AssertionError):
			x,x_test,y,y_test,d = self.make_data()

			model = xbart.XBART(model="Probit",**self.params)
			model.fit(x,y,d-1)

			# Make x_test not match
			x_test = np.concatenate((x_test,x_test),axis=1)
			model.predict(x_test)
示例#5
0
文件: test.py 项目: jgibson2/XBART
	def test_multinomial(self):
		x,x_test,y,y_test,d = self.make_data()
		y = (y >0)*1 ; y_test = (y_test > 0)*1
		model = xbart.XBART(model="Multinomial",**self.params,num_classes=2)
		model.fit(x,y,d-1)
		y_pred = (model.predict(x_test)[:,1] > 0)*1
		y_bin = (y_test > 0 )*1
		acc = np.mean(y_pred == y_bin)
		print("Accuracy:" + str(acc))
		self.assertTrue(acc > 0.1)
示例#6
0
文件: test.py 项目: jgibson2/XBART
	def test_probit(self):
		x,x_test,y,y_test,d = self.make_data()
		y = (y >0)*2-1 ; y_test = (y_test > 0)*2-1
		model = xbart.XBART(model="Probit",**self.params)
		model.fit(x,y,d-1)
		y_pred = (model.predict(x_test) > 0)*1
		y_bin = (y_test > 0 )*1
		acc = np.mean(y_pred == y_bin)
		print("Accuracy:" + str(acc))
		self.assertTrue(acc > 0.6)
示例#7
0
文件: test.py 项目: grantbrown/XBART
	def test_bool_with_good_float(self):
		xbart.XBART(parallel = 0.0)
示例#8
0
文件: test.py 项目: grantbrown/XBART
	def test_bool_with_good_int(self):
		xbart.XBART(parallel = 0)
示例#9
0
文件: test.py 项目: grantbrown/XBART
	def test_bool_with_bad_string(self):
		with self.assertRaises(TypeError):
			xbart.XBART(parallel = "2")
示例#10
0
文件: test.py 项目: grantbrown/XBART
	def test_bool_with_bad_float(self):
		with self.assertRaises(TypeError):
			xbart.XBART(parallel= 2.2)
示例#11
0
文件: test.py 项目: grantbrown/XBART
	def test_bool_with_bad_int(self):
		with self.assertRaises(TypeError):
			params = {"parallel":2}
			xbart.XBART(parallel = 2)
示例#12
0
文件: test.py 项目: grantbrown/XBART
	def test_float_bad_string(self):
		with self.assertRaises(TypeError):	
			xbart.XBART(alpha="5")
示例#13
0
文件: test.py 项目: grantbrown/XBART
	def test_float_good_int(self):	
		xbart.XBART(alpha=5)
示例#14
0
文件: test.py 项目: grantbrown/XBART
	def test_int_as_good_float(self):
		xbart.XBART(num_trees = 5.0)
示例#15
0
文件: test.py 项目: grantbrown/XBART
	def test_int_as_bad_string(self):
		with self.assertRaises(TypeError):
			xbart.XBART(num_trees = 5.1)
示例#16
0
文件: test.py 项目: jgibson2/XBART
	def test_missing_values(self):
		x,x_test,y,y_test,d = self.make_data()
		x[0,5] = np.NINF
		model = xbart.XBART(**self.params)
		model.fit(x,y,d-1)