示例#1
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def test_mean():
    assert mean([10, 20]) == 15
    assert mean([100, 300]) == 200
示例#2
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def test_mean_zero_divison():
    with pytest.raises(ZeroDivisionError):
        mean([])
示例#3
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#	sheet = book.sheet_by_index(0)

	plot_x = np.zeros(sheet.nrows-1, dtype=np.float64)
	plot_y = np.zeros(sheet.nrows-1, dtype=np.float64)

	for row in range(sheet.nrows):
		if row==0:
			plt.xlabel(sheet.cell(0,1).value)
			plt.ylabel(sheet.cell(0,2).value)
			pass
		elif row>=1:
			plot_x[row-1] = float(sheet.cell(row,1).value)
			plot_y[row-1] = float(sheet.cell(row,2).value)
			
	# 特徴量の計算
	print "mean(x) = " + str(mymodule.mean(plot_x))
	print "mean(y) = " + str(mymodule.mean(plot_y))
	print "variance(x) = " + str(mymodule.variance(plot_x))
	print "variance(y) = " + str(mymodule.variance(plot_y))
	print "co-variance(x,y) = " + str(mymodule.covariance(plot_x,plot_y))
	print "unbased-variance(x) = " + str(mymodule.u_variance(plot_x))
	print "unbased-variance(y) = " + str(mymodule.u_variance(plot_y))
	print "coefficient(x,y) = " + str(mymodule.coefficient(plot_x,plot_y))

	# 回帰直線の計算
	liner_a = np.zeros(2, dtype=np.float64);
	mymodule.simple_liner_regression(plot_x, plot_y, liner_a)
	a0 = liner_a[0]
	a1 = liner_a[1]
	print "(a0,a1) = (" + str(a0) + ", " + str(a1) + ")"
	
示例#4
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def test_mean():
    assert mean([10, 20]) == 15
    assert mean([100, 300]) == 200
示例#5
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def test_mean_zero_divison():
    with pytest.raises(ZeroDivisionError):
        mean([])
示例#6
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 def test_mean(self):
     self.assertEqual(mean([10, 20]), 15)
     self.assertEqual(mean([100, 300]), 200)
     self.assertEqual(mean([1, 2]), 1.5)
示例#7
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 def test_mean(self):
     self.assertEqual(mean([10, 20]), 15)
     self.assertEqual(mean([100, 300]), 200)
     self.assertEqual(mean([1, 2]), 1.5)