Module miplearn.components.lazy_dynamic
Expand source code
# 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 logging
import sys
from copy import deepcopy
from typing import Any, Dict
import numpy as np
from tqdm.auto import tqdm
from miplearn.classifiers import Classifier
from miplearn.classifiers.counting import CountingClassifier
from miplearn.components import classifier_evaluation_dict
from miplearn.components.component import Component
from miplearn.extractors import InstanceFeaturesExtractor, InstanceIterator
logger = logging.getLogger(__name__)
class DynamicLazyConstraintsComponent(Component):
"""
A component that predicts which lazy constraints to enforce.
"""
def __init__(
self,
classifier: Classifier = CountingClassifier(),
threshold: float = 0.05,
):
self.threshold: float = threshold
self.classifier_prototype: Classifier = classifier
self.classifiers: Dict[Any, Classifier] = {}
def before_solve(self, solver, instance, model):
instance.found_violated_lazy_constraints = []
logger.info("Predicting violated lazy constraints...")
violations = self.predict(instance)
logger.info("Enforcing %d lazy constraints..." % len(violations))
for v in violations:
cut = instance.build_lazy_constraint(model, v)
solver.internal_solver.add_constraint(cut)
def iteration_cb(self, solver, instance, model):
logger.debug("Finding violated (dynamic) lazy constraints...")
violations = instance.find_violated_lazy_constraints(model)
if len(violations) == 0:
return False
instance.found_violated_lazy_constraints += violations
logger.debug(" %d violations found" % len(violations))
for v in violations:
cut = instance.build_lazy_constraint(model, v)
solver.internal_solver.add_constraint(cut)
return True
def after_solve(
self,
solver,
instance,
model,
stats,
training_data,
):
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(InstanceIterator(training_instances)):
for v in instance.found_violated_lazy_constraints:
if isinstance(v, list):
v = tuple(v)
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 (lazy)",
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_lazy_constraints)
for idx in tqdm(
range(len(instances)),
desc="Evaluate (lazy)",
disable=not sys.stdout.isatty(),
):
instance = instances[idx]
condition_positive = set(instance.found_violated_lazy_constraints)
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
Classes
class DynamicLazyConstraintsComponent (classifier=CountingClassifier(mean=None), threshold=0.05)
-
A component that predicts which lazy constraints to enforce.
Expand source code
class DynamicLazyConstraintsComponent(Component): """ A component that predicts which lazy constraints to enforce. """ def __init__( self, classifier: Classifier = CountingClassifier(), threshold: float = 0.05, ): self.threshold: float = threshold self.classifier_prototype: Classifier = classifier self.classifiers: Dict[Any, Classifier] = {} def before_solve(self, solver, instance, model): instance.found_violated_lazy_constraints = [] logger.info("Predicting violated lazy constraints...") violations = self.predict(instance) logger.info("Enforcing %d lazy constraints..." % len(violations)) for v in violations: cut = instance.build_lazy_constraint(model, v) solver.internal_solver.add_constraint(cut) def iteration_cb(self, solver, instance, model): logger.debug("Finding violated (dynamic) lazy constraints...") violations = instance.find_violated_lazy_constraints(model) if len(violations) == 0: return False instance.found_violated_lazy_constraints += violations logger.debug(" %d violations found" % len(violations)) for v in violations: cut = instance.build_lazy_constraint(model, v) solver.internal_solver.add_constraint(cut) return True def after_solve( self, solver, instance, model, stats, training_data, ): 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(InstanceIterator(training_instances)): for v in instance.found_violated_lazy_constraints: if isinstance(v, list): v = tuple(v) 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 (lazy)", 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_lazy_constraints) for idx in tqdm( range(len(instances)), desc="Evaluate (lazy)", disable=not sys.stdout.isatty(), ): instance = instances[idx] condition_positive = set(instance.found_violated_lazy_constraints) 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
Ancestors
- Component
- abc.ABC
Methods
def evaluate(self, instances)
-
Expand source code
def evaluate(self, instances): results = {} all_violations = set() for instance in instances: all_violations |= set(instance.found_violated_lazy_constraints) for idx in tqdm( range(len(instances)), desc="Evaluate (lazy)", disable=not sys.stdout.isatty(), ): instance = instances[idx] condition_positive = set(instance.found_violated_lazy_constraints) 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
def fit(self, training_instances)
-
Expand source code
def fit(self, training_instances): logger.debug("Fitting...") features = InstanceFeaturesExtractor().extract(training_instances) self.classifiers = {} violation_to_instance_idx = {} for (idx, instance) in enumerate(InstanceIterator(training_instances)): for v in instance.found_violated_lazy_constraints: if isinstance(v, list): v = tuple(v) 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 (lazy)", 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)
-
Expand source code
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
Inherited members