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343 lines
11 KiB
Python
343 lines
11 KiB
Python
# Copyright (c) 2017-present, Facebook, Inc.
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# All rights reserved.
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#
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# This source code is licensed under the BSD-style license found in the
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# LICENSE file in the root directory of this source tree. An additional grant
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# of patent rights can be found in the PATENTS file in the same directory.
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from __future__ import absolute_import
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from __future__ import division
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from __future__ import print_function
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from __future__ import unicode_literals
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import os
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import numpy as np
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import pandas as pd
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# fb-block 1 start
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from unittest import TestCase
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from fbprophet import Prophet
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# fb-block 1 end
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# fb-block 2
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DATA = pd.read_csv(
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os.path.join(os.path.dirname(__file__), 'data.csv'),
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parse_dates=['ds'],
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)
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DATA2 = pd.read_csv(
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os.path.join(os.path.dirname(__file__), 'data2.csv'),
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parse_dates=['ds'],
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)
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class TestProphet(TestCase):
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def test_fit_predict(self):
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N = DATA.shape[0]
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train = DATA.head(N // 2)
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future = DATA.tail(N // 2)
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forecaster = Prophet()
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forecaster.fit(train)
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forecaster.predict(future)
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def test_fit_predict_no_seasons(self):
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N = DATA.shape[0]
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train = DATA.head(N // 2)
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future = DATA.tail(N // 2)
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forecaster = Prophet(weekly_seasonality=False, yearly_seasonality=False)
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forecaster.fit(train)
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forecaster.predict(future)
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def test_fit_predict_no_changepoints(self):
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N = DATA.shape[0]
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train = DATA.head(N // 2)
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future = DATA.tail(N // 2)
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forecaster = Prophet(n_changepoints=0)
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forecaster.fit(train)
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forecaster.predict(future)
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def test_fit_changepoint_not_in_history(self):
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train = DATA[(DATA['ds'] < '2013-01-01') | (DATA['ds'] > '2014-01-01')]
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train[(train['ds'] > '2014-01-01')] += 20
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future = pd.DataFrame({'ds': DATA['ds']})
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forecaster = Prophet(changepoints=['2013-06-06'])
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forecaster.fit(train)
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forecaster.predict(future)
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def test_fit_predict_duplicates(self):
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N = DATA.shape[0]
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train1 = DATA.head(N // 2).copy()
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train2 = DATA.head(N // 2).copy()
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train2['y'] += 10
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train = train1.append(train2)
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future = pd.DataFrame({'ds': DATA['ds'].tail(N // 2)})
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forecaster = Prophet()
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forecaster.fit(train)
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forecaster.predict(future)
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def test_setup_dataframe(self):
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m = Prophet()
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N = DATA.shape[0]
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history = DATA.head(N // 2).copy()
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history = m.setup_dataframe(history, initialize_scales=True)
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self.assertTrue('t' in history)
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self.assertEqual(history['t'].min(), 0.0)
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self.assertEqual(history['t'].max(), 1.0)
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self.assertTrue('y_scaled' in history)
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self.assertEqual(history['y_scaled'].max(), 1.0)
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def test_get_changepoints(self):
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m = Prophet()
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N = DATA.shape[0]
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history = DATA.head(N // 2).copy()
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history = m.setup_dataframe(history, initialize_scales=True)
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m.history = history
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m.set_changepoints()
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cp = m.changepoints_t
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self.assertEqual(cp.shape[0], m.n_changepoints)
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self.assertEqual(len(cp.shape), 1)
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self.assertTrue(cp.min() > 0)
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self.assertTrue(cp.max() < N)
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mat = m.get_changepoint_matrix()
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self.assertEqual(mat.shape[0], N // 2)
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self.assertEqual(mat.shape[1], m.n_changepoints)
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def test_get_zero_changepoints(self):
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m = Prophet(n_changepoints=0)
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N = DATA.shape[0]
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history = DATA.head(N // 2).copy()
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history = m.setup_dataframe(history, initialize_scales=True)
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m.history = history
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m.set_changepoints()
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cp = m.changepoints_t
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self.assertEqual(cp.shape[0], 1)
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self.assertEqual(cp[0], 0)
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mat = m.get_changepoint_matrix()
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self.assertEqual(mat.shape[0], N // 2)
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self.assertEqual(mat.shape[1], 1)
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def test_fourier_series_weekly(self):
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mat = Prophet.fourier_series(DATA['ds'], 7, 3)
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# These are from the R forecast package directly.
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true_values = np.array([
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0.7818315, 0.6234898, 0.9749279, -0.2225209, 0.4338837, -0.9009689,
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])
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self.assertAlmostEqual(np.sum((mat[0] - true_values)**2), 0.0)
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def test_fourier_series_yearly(self):
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mat = Prophet.fourier_series(DATA['ds'], 365.25, 3)
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# These are from the R forecast package directly.
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true_values = np.array([
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0.7006152, -0.7135393, -0.9998330, 0.01827656, 0.7262249, 0.6874572,
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])
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self.assertAlmostEqual(np.sum((mat[0] - true_values)**2), 0.0)
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def test_growth_init(self):
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model = Prophet(growth='logistic')
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history = DATA.iloc[:468].copy()
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history['cap'] = history['y'].max()
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history = model.setup_dataframe(history, initialize_scales=True)
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k, m = model.linear_growth_init(history)
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self.assertAlmostEqual(k, 0.3055671)
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self.assertAlmostEqual(m, 0.5307511)
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k, m = model.logistic_growth_init(history)
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self.assertAlmostEqual(k, 1.507925, places=4)
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self.assertAlmostEqual(m, -0.08167497, places=4)
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def test_piecewise_linear(self):
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model = Prophet()
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t = np.arange(11.)
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m = 0
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k = 1.0
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deltas = np.array([0.5])
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changepoint_ts = np.array([5])
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y = model.piecewise_linear(t, deltas, k, m, changepoint_ts)
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y_true = np.array([0.0, 1.0, 2.0, 3.0, 4.0, 5.0,
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6.5, 8.0, 9.5, 11.0, 12.5])
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self.assertEqual((y - y_true).sum(), 0.0)
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t = t[8:]
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y_true = y_true[8:]
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y = model.piecewise_linear(t, deltas, k, m, changepoint_ts)
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self.assertEqual((y - y_true).sum(), 0.0)
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def test_piecewise_logistic(self):
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model = Prophet()
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t = np.arange(11.)
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cap = np.ones(11) * 10
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m = 0
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k = 1.0
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deltas = np.array([0.5])
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changepoint_ts = np.array([5])
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y = model.piecewise_logistic(t, cap, deltas, k, m, changepoint_ts)
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y_true = np.array([5.000000, 7.310586, 8.807971, 9.525741, 9.820138,
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9.933071, 9.984988, 9.996646, 9.999252, 9.999833,
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9.999963])
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self.assertAlmostEqual((y - y_true).sum(), 0.0, places=5)
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t = t[8:]
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y_true = y_true[8:]
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cap = cap[8:]
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y = model.piecewise_logistic(t, cap, deltas, k, m, changepoint_ts)
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self.assertAlmostEqual((y - y_true).sum(), 0.0, places=5)
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def test_holidays(self):
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holidays = pd.DataFrame({
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'ds': pd.to_datetime(['2016-12-25']),
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'holiday': ['xmas'],
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'lower_window': [-1],
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'upper_window': [0],
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})
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model = Prophet(holidays=holidays)
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df = pd.DataFrame({
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'ds': pd.date_range('2016-12-20', '2016-12-31')
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})
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feats = model.make_holiday_features(df['ds'])
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# 11 columns generated even though only 8 overlap
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self.assertEqual(feats.shape, (df.shape[0], 2))
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self.assertEqual((feats.sum(0) - np.array([1.0, 1.0])).sum(), 0)
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holidays = pd.DataFrame({
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'ds': pd.to_datetime(['2016-12-25']),
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'holiday': ['xmas'],
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'lower_window': [-1],
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'upper_window': [10],
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})
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feats = Prophet(holidays=holidays).make_holiday_features(df['ds'])
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# 12 columns generated even though only 8 overlap
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self.assertEqual(feats.shape, (df.shape[0], 12))
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def test_fit_with_holidays(self):
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holidays = pd.DataFrame({
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'ds': pd.to_datetime(['2012-06-06', '2013-06-06']),
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'holiday': ['seans-bday'] * 2,
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'lower_window': [0] * 2,
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'upper_window': [1] * 2,
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})
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model = Prophet(holidays=holidays, uncertainty_samples=0)
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model.fit(DATA).predict()
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def test_make_future_dataframe(self):
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N = 468
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train = DATA.head(N // 2)
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forecaster = Prophet()
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forecaster.fit(train)
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future = forecaster.make_future_dataframe(periods=3, freq='D',
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include_history=False)
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correct = pd.DatetimeIndex(['2013-04-26', '2013-04-27', '2013-04-28'])
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self.assertEqual(len(future), 3)
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for i in range(3):
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self.assertEqual(future.iloc[i]['ds'], correct[i])
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future = forecaster.make_future_dataframe(periods=3, freq='M',
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include_history=False)
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correct = pd.DatetimeIndex(['2013-04-30', '2013-05-31', '2013-06-30'])
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self.assertEqual(len(future), 3)
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for i in range(3):
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self.assertEqual(future.iloc[i]['ds'], correct[i])
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def test_auto_weekly_seasonality(self):
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# Should be enabled
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N = 15
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train = DATA.head(N)
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m = Prophet()
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self.assertEqual(m.weekly_seasonality, 'auto')
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m.fit(train)
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self.assertIn('weekly', m.seasonalities)
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self.assertEqual(m.seasonalities['weekly'], (7, 3))
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# Should be disabled due to too short history
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N = 9
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train = DATA.head(N)
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m = Prophet()
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m.fit(train)
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self.assertNotIn('weekly', m.seasonalities)
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m = Prophet(weekly_seasonality=True)
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m.fit(train)
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self.assertIn('weekly', m.seasonalities)
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# Should be False due to weekly spacing
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train = DATA.iloc[::7, :]
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m = Prophet()
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m.fit(train)
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self.assertNotIn('weekly', m.seasonalities)
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m = Prophet(weekly_seasonality=2)
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m.fit(DATA)
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self.assertEqual(m.seasonalities['weekly'], (7, 2))
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def test_auto_yearly_seasonality(self):
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# Should be enabled
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m = Prophet()
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self.assertEqual(m.yearly_seasonality, 'auto')
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m.fit(DATA)
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self.assertIn('yearly', m.seasonalities)
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self.assertEqual(m.seasonalities['yearly'], (365.25, 10))
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# Should be disabled due to too short history
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N = 240
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train = DATA.head(N)
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m = Prophet()
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m.fit(train)
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self.assertNotIn('yearly', m.seasonalities)
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m = Prophet(yearly_seasonality=True)
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m.fit(train)
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self.assertIn('yearly', m.seasonalities)
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m = Prophet(yearly_seasonality=7)
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m.fit(DATA)
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self.assertEqual(m.seasonalities['yearly'], (365.25, 7))
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def test_auto_daily_seasonality(self):
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# Should be enabled
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m = Prophet()
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self.assertEqual(m.yearly_seasonality, 'auto')
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m.fit(DATA2)
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self.assertIn('daily', m.seasonalities)
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self.assertEqual(m.seasonalities['daily'], (1, 4))
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# Should be disabled due to too short history
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N = 430
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train = DATA2.head(N)
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m = Prophet()
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m.fit(train)
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self.assertNotIn('daily', m.seasonalities)
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m = Prophet(daily_seasonality=True)
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m.fit(train)
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self.assertIn('daily', m.seasonalities)
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m = Prophet(daily_seasonality=7)
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m.fit(DATA2)
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self.assertEqual(m.seasonalities['daily'], (1, 7))
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m = Prophet()
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m.fit(DATA)
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self.assertNotIn('daily', m.seasonalities)
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def test_subdaily_holidays(self):
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holidays = pd.DataFrame({
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'ds': pd.to_datetime(['2017-01-02']),
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'holiday': ['new_years'],
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})
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m = Prophet(holidays=holidays)
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m.fit(DATA2)
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fcst = m.predict()
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self.assertEqual(sum(fcst['new_years'] == 0), 575)
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def test_custom_seasonality(self):
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m = Prophet()
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m.add_seasonality(name='monthly', period=30, fourier_order=5)
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self.assertEqual(m.seasonalities['monthly'], (30, 5))
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