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main_timegan.py
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main_timegan.py
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"""Time-series Generative Adversarial Networks (TimeGAN) Codebase.
Reference: Jinsung Yoon, Daniel Jarrett, Mihaela van der Schaar,
"Time-series Generative Adversarial Networks,"
Neural Information Processing Systems (NeurIPS), 2019.
Paper link: https://papers.nips.cc/paper/8789-time-series-generative-adversarial-networks
Last updated Date: April 24th 2020
Code author: Jinsung Yoon ([email protected])
-----------------------------
main_timegan.py
(1) Import data
(2) Generate synthetic data
(3) Evaluate the performances in three ways
- Visualization (t-SNE, PCA)
- Discriminative score
- Predictive score
"""
## Necessary packages
from __future__ import absolute_import
from __future__ import division
from __future__ import print_function
import argparse
import numpy as np
import warnings
warnings.filterwarnings("ignore")
# 1. TimeGAN model
from timegan import timegan
# 2. Data loading
from data_loading import real_data_loading, sine_data_generation
# 3. Metrics
from metrics.discriminative_metrics import discriminative_score_metrics
from metrics.predictive_metrics import predictive_score_metrics
from metrics.visualization_metrics import visualization
def main (args):
"""Main function for timeGAN experiments.
Args:
- data_name: sine, stock, or energy
- seq_len: sequence length
- Network parameters (should be optimized for different datasets)
- module: gru, lstm, or lstmLN
- hidden_dim: hidden dimensions
- num_layer: number of layers
- iteration: number of training iterations
- batch_size: the number of samples in each batch
- metric_iteration: number of iterations for metric computation
Returns:
- ori_data: original data
- generated_data: generated synthetic data
- metric_results: discriminative and predictive scores
"""
## Data loading
if args.data_name in ['stock', 'energy']:
ori_data = real_data_loading(args.data_name, args.seq_len)
elif args.data_name == 'sine':
# Set number of samples and its dimensions
no, dim = 10000, 5
ori_data = sine_data_generation(no, args.seq_len, dim)
print(args.data_name + ' dataset is ready.')
## Synthetic data generation by TimeGAN
# Set newtork parameters
parameters = dict()
parameters['module'] = args.module
parameters['hidden_dim'] = args.hidden_dim
parameters['num_layer'] = args.num_layer
parameters['iterations'] = args.iteration
parameters['batch_size'] = args.batch_size
generated_data = timegan(ori_data, parameters)
print('Finish Synthetic Data Generation')
## Performance metrics
# Output initialization
metric_results = dict()
# 1. Discriminative Score
discriminative_score = list()
for _ in range(args.metric_iteration):
temp_disc = discriminative_score_metrics(ori_data, generated_data)
discriminative_score.append(temp_disc)
metric_results['discriminative'] = np.mean(discriminative_score)
# 2. Predictive score
predictive_score = list()
for tt in range(args.metric_iteration):
temp_pred = predictive_score_metrics(ori_data, generated_data)
predictive_score.append(temp_pred)
metric_results['predictive'] = np.mean(predictive_score)
# 3. Visualization (PCA and tSNE)
visualization(ori_data, generated_data, 'pca')
visualization(ori_data, generated_data, 'tsne')
## Print discriminative and predictive scores
print(metric_results)
return ori_data, generated_data, metric_results
if __name__ == '__main__':
# Inputs for the main function
parser = argparse.ArgumentParser()
parser.add_argument(
'--data_name',
choices=['sine','stock','energy'],
default='stock',
type=str)
parser.add_argument(
'--seq_len',
help='sequence length',
default=24,
type=int)
parser.add_argument(
'--module',
choices=['gru','lstm','lstmLN'],
default='gru',
type=str)
parser.add_argument(
'--hidden_dim',
help='hidden state dimensions (should be optimized)',
default=24,
type=int)
parser.add_argument(
'--num_layer',
help='number of layers (should be optimized)',
default=3,
type=int)
parser.add_argument(
'--iteration',
help='Training iterations (should be optimized)',
default=50000,
type=int)
parser.add_argument(
'--batch_size',
help='the number of samples in mini-batch (should be optimized)',
default=128,
type=int)
parser.add_argument(
'--metric_iteration',
help='iterations of the metric computation',
default=10,
type=int)
args = parser.parse_args()
# Calls main function
ori_data, generated_data, metrics = main(args)