Esempio n. 1
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 def test_exponential_poisson_N(self):
     kgpm = KInflatedGammaPoissonModel([ReachPoint([100], [100])])
     self.assertAlmostEqual(kgpm._exponential_poisson_N(19971, 7992),
                            9769,
                            delta=1)
     self.assertAlmostEqual(kgpm._exponential_poisson_N(20000, 10000),
                            13333.33,
                            delta=1)
Esempio n. 2
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 def test_exponential_poisson_N_from_beta(self):
     kgpm = KInflatedGammaPoissonModel([ReachPoint([100], [100])])
     self.assertAlmostEqual(kgpm._exponential_poisson_N_from_beta(
         19971, 7992, 2.41),
                            9416.0,
                            delta=1)
     self.assertAlmostEqual(
         kgpm._exponential_poisson_N_from_beta(30000, 10000, 2), 10000.0)
Esempio n. 3
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 def test_exponential_poisson_reach(self):
     kgpm = KInflatedGammaPoissonModel([ReachPoint([100], [100])])
     self.assertAlmostEqual(
         kgpm._exponential_poisson_reach(20000, 10000, 3.0), 8000.0)
     self.assertAlmostEqual(kgpm._exponential_poisson_reach(
         19971, 12560, 26.19),
                            7888.78,
                            delta=1)
Esempio n. 4
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 def test_fit_frequency_one(self):
     data = HeterogeneousImpressionGenerator(10000,
                                             gamma_shape=1.0,
                                             gamma_scale=3)()
     publisher = PublisherData(FixedPriceGenerator(0.1)(data))
     dataset = DataSet([publisher], f"Exponential-poisson")
     spend_fraction = 0.5
     spend = dataset._data[0].max_spend * spend_fraction
     point = dataset.reach_by_spend([spend], max_frequency=1)
     gm = GoergModel([point])
     gm_reach = gm.by_spend([spend]).reach()
     kgpm = KInflatedGammaPoissonModel([point])
     kgpm._fit()
     kgpm_reach = kgpm.by_spend([spend]).reach()
     self.assertAlmostEqual(gm_reach, kgpm_reach, delta=1)
Esempio n. 5
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    def test_fit_exponential_poisson_model(self):
        p1 = ReachPoint([20000], [10000])
        kgpm1 = KInflatedGammaPoissonModel([p1])
        N1, dist1 = kgpm1._fit_exponential_poisson_model(p1)
        self.assertAlmostEqual(N1, 13333.33, delta=1)
        self.assertAlmostEqual(dist1._alpha, 1.0)
        self.assertAlmostEqual(dist1._beta, 2.0, delta=0.1)

        p2 = ReachPoint([19971],
                        [7993, 4815, 2914, 1759, 1011, 604, 355, 214, 122, 75])
        kgpm2 = KInflatedGammaPoissonModel([p2])
        N2, dist2 = kgpm1._fit_exponential_poisson_model(p2)
        self.assertAlmostEqual(N2, 8564, delta=1)
        self.assertAlmostEqual(dist2._alpha, 1.0)
        self.assertAlmostEqual(dist2._beta, 1.8, delta=0.1)
Esempio n. 6
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 def test_by_impressions(self, mock_fit_point):
     mock_fit_point.return_value = (
         10000,
         KInflatedGammaPoissonDistribution(5.0, 2.0, []),
     )
     # Imax = 25000, N = 10000, alpha = 5, beta = 2
     h_training = [7412, 4233, 2014, 842, 320, 112, 37, 11, 2]
     rp = ReachPoint([15000], h_training, [200.0])
     kgpm = KInflatedGammaPoissonModel([rp])
     kgpm._fit()
     rp = kgpm.by_impressions([10000], max_frequency=5)
     h_expected = np.array([6056, 2629, 925, 283, 78])
     h_actual = np.array([int(rp.reach(i)) for i in range(1, 6)])
     total_error = np.sum((h_expected - h_actual)**2 / h_expected)
     self.assertAlmostEqual(rp.spends[0], 133.0, delta=1)
     for i in range(len(h_actual)):
         self.assertTrue(
             (h_actual[i] - h_expected[i])**2 / h_actual[i] < 0.1,
             f"Discrepancy found at position {i}. "
             f"Got {h_actual[i]} Expected {h_expected[i]}",
         )
Esempio n. 7
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 def test_fit_gamma_poisson(self):
     # mean = 5, var = 6
     N, alpha, beta = 10000, 8, 0.5
     data = HeterogeneousImpressionGenerator(10000,
                                             gamma_shape=alpha,
                                             gamma_scale=beta)()
     publisher = PublisherData(FixedPriceGenerator(0.1)(data))
     dataset = DataSet([publisher], f"Exponential-poisson")
     spend_fraction = 0.5
     spend = dataset._data[0].max_spend * spend_fraction
     point = dataset.reach_by_spend([spend])
     gm = GoergModel([point])
     gm_reach = gm.by_spend([spend]).reach()
     kgpm = KInflatedGammaPoissonModel([point])
     kgpm.print_fit_header()
     kgpm.print_fit("true", 0.0, N, alpha, beta, [])
     kgpm._fit()
     kgpm_reach = kgpm.by_spend([spend]).reach()
     self.assertAlmostEqual(gm_reach, kgpm_reach, delta=100)
Esempio n. 8
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 def test_exponential_poisson_beta(self):
     kgpm = KInflatedGammaPoissonModel([ReachPoint([100], [100])])
     self.assertAlmostEqual(
         kgpm._exponential_poisson_beta(30000, 10000, 10000), 2.0)
     self.assertAlmostEqual(
         kgpm._exponential_poisson_beta(20000, 10000, 8000), 3.0)