QuaPy/tweet_sent_quant.py

138 lines
5.3 KiB
Python

from sklearn.linear_model import LogisticRegression
import quapy as qp
import quapy.functional as F
import numpy as np
import os
import sys
import pickle
qp.environ['SAMPLE_SIZE'] = 100
sample_size = qp.environ['SAMPLE_SIZE']
def evaluate_experiment(true_prevalences, estim_prevalences, n_repetitions=25):
#n_classes = true_prevalences.shape[1]
#true_ave = true_prevalences.reshape(-1, n_repetitions, n_classes).mean(axis=1)
#estim_ave = estim_prevalences.reshape(-1, n_repetitions, n_classes).mean(axis=1)
#estim_std = estim_prevalences.reshape(-1, n_repetitions, n_classes).std(axis=1)
#print('\nTrueP->mean(Phat)(std(Phat))\n'+'='*22)
#for true, estim, std in zip(true_ave, estim_ave, estim_std):
# str_estim = ', '.join([f'{mean:.3f}+-{std:.4f}' for mean, std in zip(estim, std)])
# print(f'{F.strprev(true)}->[{str_estim}]')
print('\nEvaluation Metrics:\n'+'='*22)
for eval_measure in [qp.error.mae, qp.error.mrae]:
err = eval_measure(true_prevalences, estim_prevalences)
print(f'\t{eval_measure.__name__}={err:.4f}')
print()
def evaluate_method_point_test(method, test):
estim_prev = method.quantify(test.instances)
true_prev = F.prevalence_from_labels(test.labels, test.n_classes)
print('\nPoint-Test evaluation:\n' + '=' * 22)
print(f'true-prev={F.strprev(true_prev)}, estim-prev={F.strprev(estim_prev)}')
for eval_measure in [qp.error.mae, qp.error.mrae]:
err = eval_measure(true_prev, estim_prev)
print(f'\t{eval_measure.__name__}={err:.4f}')
def quantification_models():
def newLR():
return LogisticRegression(max_iter=1000, solver='lbfgs', n_jobs=-1)
__C_range = np.logspace(-4, 5, 10)
lr_params = {'C': __C_range, 'class_weight': [None, 'balanced']}
#yield 'cc', qp.method.aggregative.CC(newLR()), lr_params
#yield 'acc', qp.method.aggregative.ACC(newLR()), lr_params
#yield 'pcc', qp.method.aggregative.PCC(newLR()), lr_params
yield 'pacc', qp.method.aggregative.PACC(newLR()), lr_params
def result_path(dataset_name, model_name, optim_metric):
return f'{dataset_name}-{model_name}-{optim_metric}.pkl'
def check_already_computed(dataset_name, model_name, optim_metric):
path = result_path(dataset_name, model_name, optim_metric)
return os.path.exists(path)
def save_results(dataset_name, model_name, optim_metric, *results):
path = result_path(dataset_name, model_name, optim_metric)
qp.util.create_parent_dir(path)
with open(path, 'wb') as foo:
pickle.dump(tuple(results), foo, pickle.HIGHEST_PROTOCOL)
if __name__ == '__main__':
np.random.seed(0)
for dataset_name in ['sanders']: # qp.datasets.TWITTER_SENTIMENT_DATASETS:
benchmark_devel = qp.datasets.fetch_twitter(dataset_name, for_model_selection=True, min_df=5, pickle=True)
benchmark_devel.stats()
for model_name, model, hyperparams in quantification_models():
model_selection = qp.model_selection.GridSearchQ(
model,
param_grid=hyperparams,
sample_size=sample_size,
n_prevpoints=21,
n_repetitions=5,
error='mae',
refit=False,
verbose=True
)
model_selection.fit(benchmark_devel.training, benchmark_devel.test)
model = model_selection.best_model()
benchmark_eval = qp.datasets.fetch_twitter(dataset_name, for_model_selection=False, min_df=5, pickle=True)
model.fit(benchmark_eval.training)
true_prevalences, estim_prevalences = qp.evaluation.artificial_sampling_prediction(
model,
test=benchmark_eval.test,
sample_size=sample_size,
n_prevpoints=21,
n_repetitions=25
)
evaluate_experiment(true_prevalences, estim_prevalences, n_repetitions=25)
evaluate_method_point_test(model, benchmark_eval.test)
#save_arrays(FLAGS.results, true_prevalences, estim_prevalences, test_name)
sys.exit(0)
# decide the test to be performed (in the case of 'semeval', tests are 'semeval13', 'semeval14', 'semeval15')
if FLAGS.dataset == 'semeval':
test_sets = ['semeval13', 'semeval14', 'semeval15']
else:
test_sets = [FLAGS.dataset]
evaluate_method_point_test(method, benchmark_eval.test, test_name=test_set)
# quantifiers:
# ----------------------------------------
# alias for quantifiers and default configurations
QUANTIFIER_ALIASES = {
'cc': lambda learner: ClassifyAndCount(learner),
'acc': lambda learner: AdjustedClassifyAndCount(learner),
'pcc': lambda learner: ProbabilisticClassifyAndCount(learner),
'pacc': lambda learner: ProbabilisticAdjustedClassifyAndCount(learner),
'emq': lambda learner: ExpectationMaximizationQuantifier(learner),
'svmq': lambda learner: OneVsAllELM(settings.SVM_PERF_HOME, loss='q'),
'svmkld': lambda learner: OneVsAllELM(settings.SVM_PERF_HOME, loss='kld'),
'svmnkld': lambda learner: OneVsAllELM(settings.SVM_PERF_HOME, loss='nkld'),
'svmmae': lambda learner: OneVsAllELM(settings.SVM_PERF_HOME, loss='mae'),
'svmmrae': lambda learner: OneVsAllELM(settings.SVM_PERF_HOME, loss='mrae'),
'mlpe': lambda learner: MaximumLikelihoodPrevalenceEstimation(),
}