stress_at_work_analysis/machine_learning/model.py

48 lines
1.6 KiB
Python

from sklearn.model_selection import LeaveOneGroupOut, cross_val_score
class ModelValidation:
def __init__(self, X, y, group_variable=None, cv_name="loso"):
self.model = None
self.cv = None
idx_common = X.index.intersection(y.index)
self.y = y.loc[idx_common, "NA"]
# TODO Handle the case of multiple labels.
self.X = X.loc[idx_common]
self.groups = self.y.index.get_level_values(group_variable)
self.cv_name = cv_name
print("ModelValidation initialized.")
def set_cv_method(self):
if self.cv_name == "loso":
self.cv = LeaveOneGroupOut()
self.cv.get_n_splits(X=self.X, y=self.y, groups=self.groups)
print("Validation method set.")
def cross_validate(self):
print("Running cross validation ...")
if self.model is None:
raise TypeError(
"Please, specify a machine learning model first, by setting the .model attribute. "
"E.g. self.model = sklearn.linear_model.LinearRegression()"
)
if self.cv is None:
raise TypeError(
"Please, specify a cross validation method first, by using set_cv_method() first."
)
if self.X.isna().any().any() or self.y.isna().any().any():
raise ValueError(
"NaNs were found in either X or y. Please, check your data before continuing."
)
return cross_val_score(
estimator=self.model,
X=self.X,
y=self.y,
groups=self.groups,
cv=self.cv,
n_jobs=-1,
scoring="r2",
)