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sentigan_instructor.py
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sentigan_instructor.py
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# -*- coding: utf-8 -*-
# @Author : William
# @Project : TextGAN-william
# @FileName : sentigan_instructor.py
# @Time : Created at 2019-07-09
# @Blog : http://zhiweil.ml/
# @Description :
# Copyrights (C) 2018. All Rights Reserved.
import torch
import torch.optim as optim
import config as cfg
from instructor.real_data.instructor import BasicInstructor
from models.SentiGAN_D import SentiGAN_D, SentiGAN_C
from models.SentiGAN_G import SentiGAN_G
from utils import rollout
from utils.cat_data_loader import CatClasDataIter
from utils.data_loader import GenDataIter
from utils.text_process import tensor_to_tokens, write_tokens
class SentiGANInstructor(BasicInstructor):
def __init__(self, opt):
super(SentiGANInstructor, self).__init__(opt)
# generator, discriminator
self.gen_list = [SentiGAN_G(cfg.gen_embed_dim, cfg.gen_hidden_dim, cfg.vocab_size, cfg.max_seq_len,
cfg.padding_idx, gpu=cfg.CUDA) for _ in range(cfg.k_label)]
self.dis = SentiGAN_D(cfg.k_label, cfg.dis_embed_dim, cfg.vocab_size, cfg.padding_idx, gpu=cfg.CUDA)
self.clas = SentiGAN_C(cfg.k_label, cfg.dis_embed_dim, cfg.max_seq_len, cfg.num_rep, cfg.extend_vocab_size,
cfg.padding_idx, gpu=cfg.CUDA)
self.init_model()
# Optimizer
self.gen_opt_list = [optim.Adam(gen.parameters(), lr=cfg.gen_lr) for gen in self.gen_list]
self.dis_opt = optim.Adam(self.dis.parameters(), lr=cfg.dis_lr)
self.clas_opt = optim.Adam(self.clas.parameters(), lr=cfg.clas_lr)
# Metrics
self.all_metrics.append(self.clas_acc)
def init_model(self):
if cfg.dis_pretrain:
self.log.info(
'Load pretrained discriminator: {}'.format(cfg.pretrained_dis_path))
self.dis.load_state_dict(torch.load(cfg.pretrained_dis_path, map_location='cuda:{}'.format(cfg.device)))
if cfg.gen_pretrain:
for i in range(cfg.k_label):
self.log.info('Load MLE pretrained generator gen: {}'.format(cfg.pretrained_gen_path + '%d' % i))
self.gen_list[i].load_state_dict(
torch.load(cfg.pretrained_gen_path + '%d' % i, map_location='cuda:{}'.format(cfg.device)))
if cfg.clas_pretrain:
self.log.info('Load pretrained classifier: {}'.format(cfg.pretrained_clas_path))
self.clas.load_state_dict(torch.load(cfg.pretrained_clas_path, map_location='cuda:%d' % cfg.device))
if cfg.CUDA:
for i in range(cfg.k_label):
self.gen_list[i] = self.gen_list[i].cuda()
self.dis = self.dis.cuda()
self.clas = self.clas.cuda()
def _run(self):
# ===Pre-train Classifier with real data===
if cfg.use_clas_acc:
self.log.info('Start training Classifier...')
self.train_classifier(cfg.PRE_clas_epoch)
# ===PRE-TRAIN GENERATOR===
if not cfg.gen_pretrain:
self.log.info('Starting Generator MLE Training...')
self.pretrain_generator(cfg.MLE_train_epoch)
if cfg.if_save and not cfg.if_test:
for i in range(cfg.k_label):
torch.save(self.gen_list[i].state_dict(), cfg.pretrained_gen_path + '%d' % i)
print('Save pre-trained generator: {}'.format(cfg.pretrained_gen_path + '%d' % i))
# ===TRAIN DISCRIMINATOR====
if not cfg.dis_pretrain:
self.log.info('Starting Discriminator Training...')
self.train_discriminator(cfg.d_step, cfg.d_epoch)
if cfg.if_save and not cfg.if_test:
torch.save(self.dis.state_dict(), cfg.pretrained_dis_path)
print('Save pre-trained discriminator: {}'.format(cfg.pretrained_dis_path))
# ===ADVERSARIAL TRAINING===
self.log.info('Starting Adversarial Training...')
self.log.info('Initial generator: %s', self.comb_metrics(fmt_str=True))
for adv_epoch in range(cfg.ADV_train_epoch):
self.log.info('-----\nADV EPOCH %d\n-----' % adv_epoch)
self.sig.update()
if self.sig.adv_sig:
self.adv_train_generator(cfg.ADV_g_step) # Generator
self.train_discriminator(cfg.ADV_d_step, cfg.ADV_d_epoch, 'ADV') # Discriminator
if adv_epoch % cfg.adv_log_step == 0 or adv_epoch == cfg.ADV_train_epoch - 1:
if cfg.if_save and not cfg.if_test:
self._save('ADV', adv_epoch)
else:
self.log.info('>>> Stop by adv_signal! Finishing adversarial training...')
break
def _test(self):
print('>>> Begin test...')
self._run()
pass
def pretrain_generator(self, epochs):
"""
Max Likelihood Pre-training for the generator
"""
for epoch in range(epochs):
self.sig.update()
if self.sig.pre_sig:
for i in range(cfg.k_label):
pre_loss = self.train_gen_epoch(self.gen_list[i], self.train_data_list[i].loader,
self.mle_criterion, self.gen_opt_list[i])
# ===Test===
if epoch % cfg.pre_log_step == 0 or epoch == epochs - 1:
if i == cfg.k_label - 1:
self.log.info('[MLE-GEN] epoch %d : pre_loss = %.4f, %s' % (
epoch, pre_loss, self.comb_metrics(fmt_str=True)))
if cfg.if_save and not cfg.if_test:
self._save('MLE', epoch)
else:
self.log.info('>>> Stop by pre signal, skip to adversarial training...')
break
def adv_train_generator(self, g_step):
"""
The gen is trained using policy gradients, using the reward from the discriminator.
Training is done for num_batches batches.
"""
for i in range(cfg.k_label):
rollout_func = rollout.ROLLOUT(self.gen_list[i], cfg.CUDA)
total_g_loss = 0
for step in range(g_step):
inp, target = GenDataIter.prepare(self.gen_list[i].sample(cfg.batch_size, cfg.batch_size), gpu=cfg.CUDA)
# ===Train===
rewards = rollout_func.get_reward(target, cfg.rollout_num, self.dis, current_k=i)
adv_loss = self.gen_list[i].batchPGLoss(inp, target, rewards)
self.optimize(self.gen_opt_list[i], adv_loss)
total_g_loss += adv_loss.item()
# ===Test===
self.log.info('[ADV-GEN]: %s', self.comb_metrics(fmt_str=True))
def train_discriminator(self, d_step, d_epoch, phase='MLE'):
"""
Training the discriminator on real_data_samples (positive) and generated samples from gen (negative).
Samples are drawn d_step times, and the discriminator is trained for d_epoch d_epoch.
"""
# prepare loader for validate
global d_loss, train_acc
for step in range(d_step):
# prepare loader for training
real_samples = []
fake_samples = []
for i in range(cfg.k_label):
real_samples.append(self.train_samples_list[i])
fake_samples.append(self.gen_list[i].sample(cfg.samples_num // cfg.k_label, 8 * cfg.batch_size))
dis_samples_list = [torch.cat(fake_samples, dim=0)] + real_samples
dis_data = CatClasDataIter(dis_samples_list)
for epoch in range(d_epoch):
# ===Train===
d_loss, train_acc = self.train_dis_epoch(self.dis, dis_data.loader, self.dis_criterion,
self.dis_opt)
# ===Test===
self.log.info('[%s-DIS] d_step %d: d_loss = %.4f, train_acc = %.4f' % (
phase, step, d_loss, train_acc))
if cfg.if_save and not cfg.if_test and phase == 'MLE':
torch.save(self.dis.state_dict(), cfg.pretrained_dis_path)
def cal_metrics_with_label(self, label_i):
assert type(label_i) == int, 'missing label'
with torch.no_grad():
# Prepare data for evaluation
eval_samples = self.gen_list[label_i].sample(cfg.samples_num, 8 * cfg.batch_size)
gen_data = GenDataIter(eval_samples)
gen_tokens = tensor_to_tokens(eval_samples, self.idx2word_dict)
gen_tokens_s = tensor_to_tokens(self.gen_list[label_i].sample(200, 200), self.idx2word_dict)
clas_data = CatClasDataIter([eval_samples], label_i)
# Reset metrics
self.bleu.reset(test_text=gen_tokens, real_text=self.test_data_list[label_i].tokens)
self.nll_gen.reset(self.gen_list[label_i], self.train_data_list[label_i].loader)
self.nll_div.reset(self.gen_list[label_i], gen_data.loader)
self.self_bleu.reset(test_text=gen_tokens_s, real_text=gen_tokens)
self.clas_acc.reset(self.clas, clas_data.loader)
self.ppl.reset(gen_tokens)
return [metric.get_score() for metric in self.all_metrics]
def _save(self, phase, epoch):
"""Save model state dict and generator's samples"""
for i in range(cfg.k_label):
if phase != 'ADV':
torch.save(self.gen_list[i].state_dict(),
cfg.save_model_root + 'gen{}_{}_{:05d}.pt'.format(i, phase, epoch))
save_sample_path = cfg.save_samples_root + 'samples_d{}_{}_{:05d}.txt'.format(i, phase, epoch)
samples = self.gen_list[i].sample(cfg.batch_size, cfg.batch_size)
write_tokens(save_sample_path, tensor_to_tokens(samples, self.idx2word_dict))