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- from sklearn.datasets import make_classification
- import numpy as np
- from pandas import DataFrame
- from datetime import datetime
- from flaml.model import (
- KNeighborsEstimator,
- LRL2Classifier,
- BaseEstimator,
- LGBMEstimator,
- CatBoostEstimator,
- XGBoostEstimator,
- RandomForestEstimator,
- Prophet,
- ARIMA,
- LGBM_TS,
- )
-
-
- def test_lrl2():
- BaseEstimator.search_space(1, "")
- X, y = make_classification(100000, 1000)
- print("start")
- lr = LRL2Classifier()
- lr.predict(X)
- lr.fit(X, y, budget=1e-5)
-
-
- def test_prep():
- X = np.array(
- list(
- zip(
- [
- 3.0,
- 16.0,
- 10.0,
- 12.0,
- 3.0,
- 14.0,
- 11.0,
- 12.0,
- 5.0,
- 14.0,
- 20.0,
- 16.0,
- 15.0,
- 11.0,
- ],
- [
- "a",
- "b",
- "a",
- "c",
- "c",
- "b",
- "b",
- "b",
- "b",
- "a",
- "b",
- 1.0,
- 1.0,
- "a",
- ],
- )
- ),
- dtype=object,
- )
- y = np.array([0, 0, 0, 0, 0, 0, 0, 1, 1, 1, 1, 1, 1, 1])
- lr = LRL2Classifier()
- lr.fit(X, y)
- lr.predict(X)
- lgbm = LGBMEstimator(n_estimators=4)
- lgbm.fit(X, y)
- cat = CatBoostEstimator(n_estimators=4)
- cat.fit(X, y)
- knn = KNeighborsEstimator(task="regression")
- knn.fit(X, y)
- xgb = XGBoostEstimator(n_estimators=4, max_leaves=4)
- xgb.fit(X, y)
- xgb.predict(X)
- rf = RandomForestEstimator(task="regression", n_estimators=4, criterion="gini")
- rf.fit(X, y)
-
- prophet = Prophet()
- try:
- prophet.predict(4)
- except ValueError:
- # predict() with steps is only supported for arima/sarimax.
- pass
- prophet.predict(X)
-
- arima = ARIMA()
- arima.predict(X)
- arima._model = False
- try:
- arima.predict(X)
- except ValueError:
- # X_test needs to be either a pandas Dataframe with dates as the first column or an int number of periods for predict().
- pass
-
- lgbm = LGBM_TS(optimize_for_horizon=True, lags=1)
- X = DataFrame(
- {
- "A": [
- datetime(1900, 2, 3),
- datetime(1900, 3, 4),
- datetime(1900, 3, 4),
- datetime(1900, 3, 4),
- datetime(1900, 7, 2),
- datetime(1900, 8, 9),
- ],
- }
- )
- y = np.array([0, 1, 0, 1, 0, 0])
- lgbm.predict(X[:2])
- lgbm.fit(X, y, period=2)
- lgbm.predict(X[:2])
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