QuAcc/quacc/evaluation/method.py

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import inspect
from functools import wraps
import numpy as np
from quapy.method.aggregative import SLD
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from quapy.protocol import UPP, AbstractProtocol
from sklearn.linear_model import LogisticRegression
import quacc as qc
from quacc.evaluation.report import EvaluationReport
from quacc.method.model_selection import GridSearchAE
from ..method.base import BQAE, MCAE, BaseAccuracyEstimator
_methods = {}
def method(func):
@wraps(func)
def wrapper(c_model, validation, protocol):
return func(c_model, validation, protocol)
_methods[func.__name__] = wrapper
return wrapper
def evaluation_report(
estimator: BaseAccuracyEstimator,
protocol: AbstractProtocol,
) -> EvaluationReport:
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method_name = inspect.stack()[1].function
report = EvaluationReport(name=method_name)
for sample in protocol():
e_sample = estimator.extend(sample)
estim_prev = estimator.estimate(e_sample.X, ext=True)
acc_score = qc.error.acc(estim_prev)
f1_score = qc.error.f1(estim_prev)
report.append_row(
sample.prevalence(),
acc_score=acc_score,
acc=abs(qc.error.acc(e_sample.prevalence()) - acc_score),
f1_score=f1_score,
f1=abs(qc.error.f1(e_sample.prevalence()) - f1_score),
)
return report
@method
def bin_sld(c_model, validation, protocol) -> EvaluationReport:
est = BQAE(c_model, SLD(LogisticRegression()))
est.fit(validation)
return evaluation_report(
estimator=est,
protocol=protocol,
)
@method
def mul_sld(c_model, validation, protocol) -> EvaluationReport:
est = MCAE(c_model, SLD(LogisticRegression()))
est.fit(validation)
return evaluation_report(
estimator=est,
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protocol=protocol,
)
@method
def bin_sld_bcts(c_model, validation, protocol) -> EvaluationReport:
est = BQAE(c_model, SLD(LogisticRegression(), recalib="bcts"))
est.fit(validation)
return evaluation_report(
estimator=est,
protocol=protocol,
)
@method
def mul_sld_bcts(c_model, validation, protocol) -> EvaluationReport:
est = MCAE(c_model, SLD(LogisticRegression(), recalib="bcts"))
est.fit(validation)
return evaluation_report(
estimator=est,
protocol=protocol,
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)
@method
def bin_sld_gs(c_model, validation, protocol) -> EvaluationReport:
v_train, v_val = validation.split_stratified(0.6, random_state=0)
model = BQAE(c_model, SLD(LogisticRegression()))
est = GridSearchAE(
model=model,
param_grid={
"q__classifier__C": np.logspace(-3, 3, 7),
"q__classifier__class_weight": [None, "balanced"],
"q__recalib": [None, "bcts", "vs"],
},
refit=False,
protocol=UPP(v_val, repeats=100),
verbose=False,
).fit(v_train)
return evaluation_report(
estimator=est,
protocol=protocol,
)
@method
def mul_sld_gs(c_model, validation, protocol) -> EvaluationReport:
v_train, v_val = validation.split_stratified(0.6, random_state=0)
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model = MCAE(c_model, SLD(LogisticRegression()))
est = GridSearchAE(
model=model,
param_grid={
"q__classifier__C": np.logspace(-3, 3, 7),
"q__classifier__class_weight": [None, "balanced"],
"q__recalib": [None, "bcts", "vs"],
},
refit=False,
protocol=UPP(v_val, repeats=100),
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verbose=False,
).fit(v_train)
return evaluation_report(
estimator=est,
protocol=protocol,
)