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MIPLearn/miplearn/components/cuts.py

97 lines
3.7 KiB

# MIPLearn: Extensible Framework for Learning-Enhanced Mixed-Integer Optimization
# Copyright (C) 2020, UChicago Argonne, LLC. All rights reserved.
# Released under the modified BSD license. See COPYING.md for more details.
import sys
from copy import deepcopy
from miplearn.classifiers.counting import CountingClassifier
from miplearn.components import classifier_evaluation_dict
from .component import Component
from ..extractors import *
logger = logging.getLogger(__name__)
class UserCutsComponent(Component):
"""
A component that predicts which user cuts to enforce.
"""
def __init__(self,
classifier=CountingClassifier(),
threshold=0.05):
self.violations = set()
self.count = {}
self.n_samples = 0
self.threshold = threshold
self.classifier_prototype = classifier
self.classifiers = {}
def before_solve(self, solver, instance, model):
instance.found_violated_user_cuts = []
logger.info("Predicting violated user cuts...")
violations = self.predict(instance)
logger.info("Enforcing %d user cuts..." % len(violations))
for v in violations:
cut = instance.build_user_cut(model, v)
solver.internal_solver.add_constraint(cut)
def after_solve(self, solver, instance, model, results):
pass
def fit(self, training_instances):
logger.debug("Fitting...")
features = InstanceFeaturesExtractor().extract(training_instances)
self.classifiers = {}
violation_to_instance_idx = {}
for (idx, instance) in enumerate(training_instances):
if not hasattr(instance, "found_violated_user_cuts"):
continue
for v in instance.found_violated_user_cuts:
if v not in self.classifiers:
self.classifiers[v] = deepcopy(self.classifier_prototype)
violation_to_instance_idx[v] = []
violation_to_instance_idx[v] += [idx]
for (v, classifier) in tqdm(self.classifiers.items(),
desc="Fit (user cuts)",
disable=not sys.stdout.isatty(),
):
logger.debug("Training: %s" % (str(v)))
label = np.zeros(len(training_instances))
label[violation_to_instance_idx[v]] = 1.0
classifier.fit(features, label)
def predict(self, instance):
violations = []
features = InstanceFeaturesExtractor().extract([instance])
for (v, classifier) in self.classifiers.items():
proba = classifier.predict_proba(features)
if proba[0][1] > self.threshold:
violations += [v]
return violations
def evaluate(self, instances):
results = {}
all_violations = set()
for instance in instances:
all_violations |= set(instance.found_violated_user_cuts)
for idx in tqdm(range(len(instances)),
desc="Evaluate (lazy)",
disable=not sys.stdout.isatty(),
):
instance = instances[idx]
condition_positive = set(instance.found_violated_user_cuts)
condition_negative = all_violations - condition_positive
pred_positive = set(self.predict(instance)) & all_violations
pred_negative = all_violations - pred_positive
tp = len(pred_positive & condition_positive)
tn = len(pred_negative & condition_negative)
fp = len(pred_positive & condition_negative)
fn = len(pred_negative & condition_positive)
results[idx] = classifier_evaluation_dict(tp, tn, fp, fn)
return results