skpro.benchmarking.evaluate.evaluate#
- skpro.benchmarking.evaluate.evaluate(estimator, cv, X, y, scoring=None, return_data=False, error_score=nan, backend=None, compute=True, **kwargs)[source]#
Evaluate estimator using re-sample folds.
All-in-one statistical performance benchmarking utility for estimators which runs a simple backtest experiment and returns a summary pd.DataFrame.
The experiment run is the following:
Denote by \(X_{train, 1}, X_{test, 1}, \dots, X_{train, K}, X_{test, K}\) the train/test folds produced by the generator
cv.split(X)Denote by \(y_{train, 1}, y_{test, 1}, \dots, y_{train, K}, y_{test, K}\) the train/test folds produced by the generatorcv.split(y).For
i = 1tocv.get_n_folds(X)do:fittheestimatorto \(X_{train, 1}\), \(y_{train, 1}\)y_pred = estimator.predict
(or
predict_probaorpredict_quantiles, depending onscoring) with exogeneous data \(X_{test, i}\)Compute
scoringon ``y_pred``versus \(y_{test, 1}\).
Results returned in this function’s return are: * results of
scoringcalculations, from 3, in the i-th loop * runtimes for fitting and/or predicting, from 1, 2 in the i-th loop * \(y_{train, i}\), \(y_{test, i}\),y_pred(optional)A distributed and-or parallel back-end can be chosen via the
backendparameter.- Parameters:
- estimatorskpro BaseProbaRegressor descendant (concrete estimator)
skpro estimator to benchmark
- cvsklearn splitter
determines split of
Xandyinto test and train folds- Xpandas DataFrame
Feature instances to use in evaluation experiment
- ypd.DataFrame, must be same length as X
Labels to used in the evaluation experiment
- scoringsubclass of skpro.performance_metrics.BaseMetric or list of same,
default=None. Used to get a score function that takes y_pred and y_test arguments and accept y_train as keyword argument. If None, then uses scoring = MeanAbsolutePercentageError(symmetric=True).
- return_databool, default=False
Returns three additional columns in the DataFrame, by default False. The cells of the columns contain each a pd.Series for y_train, y_pred, y_test.
- error_score“raise” or numeric, default=np.nan
Value to assign to the score if an exception occurs in estimator fitting. If set to “raise”, the exception is raised. If a numeric value is given, FitFailedWarning is raised.
- backend{“dask”, “loky”, “multiprocessing”, “threading”}, by default None.
Runs parallel evaluate if specified and strategy is set as “refit”. - “loky”, “multiprocessing” and “threading”: uses joblib Parallel loops - “dask”: uses dask, requires dask package in environment Recommendation: Use “dask” or “loky” for parallel evaluate. “threading” is unlikely to see speed ups due to the GIL and the serialization backend (cloudpickle) for “dask” and “loky” is generally more robust than the standard pickle library used in “multiprocessing”.
- computebool, default=True
If backend=”dask”, whether returned DataFrame is computed. If set to True, returns pd.DataFrame, otherwise dask.dataframe.DataFrame.
- **kwargsKeyword arguments
Only relevant if backend is specified. Additional kwargs are passed into dask.distributed.get_client or dask.distributed.Client if backend is set to “dask”, otherwise kwargs are passed into joblib.Parallel.
- Returns:
- resultspd.DataFrame or dask.dataframe.DataFrame
DataFrame that contains several columns with information regarding each refit/update and prediction of the estimator. Row index is splitter index of train/test fold in cv. Entries in the i-th row are for the i-th train/test split in cv. Columns are as follows: - test_{scoring.name}: (float) Model performance score. If scoring is a list,
then there is a column withname test_{scoring.name} for each scorer.
fit_time: (float) Time in sec for fit or update on train fold.
pred_time: (float) Time in sec to predict from fitted estimator.
len_y_train: (int) length of y_train.
y_train: (pd.Series) only present if see return_data=True train fold of the i-th split in cv, used to fit the estimator.
y_pred: (pd.Series) present if see return_data=True predictions from fitted estimator for the i-th test fold indices of cv.
y_test: (pd.Series) present if see return_data=True testing fold of the i-th split in cv, used to compute the metric.
Examples
>>> from sklearn.datasets import load_diabetes >>> from sklearn.linear_model import LinearRegression >>> from sklearn.model_selection import KFold
>>> from skpro.benchmarking.evaluate import evaluate >>> from skpro.metrics import CRPS >>> from skpro.regression.residual import ResidualDouble
>>> X, y = load_diabetes(return_X_y=True, as_frame=True) >>> y = pd.DataFrame(y) # skpro assumes y is pd.DataFrame
>>> estimator = ResidualDouble(LinearRegression()) >>> cv = KFold(n_splits=3) >>> crps = CRPS()
>>> results = evaluate(estimator=estimator, X=X, y=y, cv=cv, scoring=crps)