Beispiel #1
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 def test_debiased(self, data):
     wm = HomoskedasticWeightMatrix(debiased=True)
     weight = wm.weight_matrix(data.x, data.z, data.e)
     z, e, nobs, nvar = data.z, data.e, data.nobs, data.nvar
     s2 = (e - e.mean()).T @ (e - e.mean()) / nobs
     scale = nobs / (nobs - nvar)
     assert_allclose(weight, scale * s2 * z.T @ z / nobs)
Beispiel #2
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 def test_config(self, data):
     wm = HomoskedasticWeightMatrix()
     z, e, nobs = data.z, data.e, data.nobs
     weight = wm.weight_matrix(data.x, z, e)
     s2 = (e - e.mean()).T @ (e - e.mean()) / nobs
     assert_allclose(weight, s2 * z.T @ z / nobs)
     assert wm.config['center'] is False
     assert wm.config['debiased'] is False
Beispiel #3
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 def test_homoskedastic(self, data):
     c = IVGMMCovariance(data.x, data.y, data.z, data.params, data.i, 'unadjusted')
     s = HomoskedasticWeightMatrix().weight_matrix(data.x, data.z, data.e)
     x, z = data.x, data.z
     xzwswzx = x.T @ z @ s @ z.T @ x / data.nobs
     cov = data.xzizx_inv @ xzwswzx @ data.xzizx_inv
     cov = (cov + cov.T) / 2
     assert_allclose(c.cov, cov)
     assert c.config['debiased'] is False
Beispiel #4
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 def test_defaults(self, data):
     wm = HomoskedasticWeightMatrix()
     z, e, nobs = data.z, data.e, data.nobs
     weight = wm.weight_matrix(data.x, z, e)
     s2 = (e - e.mean()).T @ (e - e.mean()) / nobs
     assert_allclose(weight, s2 * z.T @ z / nobs)
Beispiel #5
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 def test_center(self, data):
     wm = HomoskedasticWeightMatrix(True)
     weight = wm.weight_matrix(data.x, data.z, data.e)
     z, e, nobs = data.z, data.e, data.nobs
     s2 = (e - e.mean()).T @ (e - e.mean()) / nobs
     assert_allclose(weight, s2 * z.T @ z / nobs)