Deep Learning Based on Generative Adversarial and Convolutional Neural
Networks for Financial Time Series Predictions
- URL: http://arxiv.org/abs/2008.08041v2
- Date: Mon, 24 Aug 2020 18:29:41 GMT
- Title: Deep Learning Based on Generative Adversarial and Convolutional Neural
Networks for Financial Time Series Predictions
- Authors: Wilfredo Tovar
- Abstract summary: This paper proposes the implementation of a generative adversarial network (GAN), which is composed by a bi-directional Long short-term memory (LSTM) and convolutional neural network(CNN)
Bi-LSTM-CNN generates synthetic data that agree with existing real financial data so the features of stocks with positive or negative trends can be retained to predict future trends of a stock.
- Score: 0.0
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: In the big data era, deep learning and intelligent data mining technique
solutions have been applied by researchers in various areas. Forecast and
analysis of stock market data have represented an essential role in today's
economy, and a significant challenge to the specialist since the market's
tendencies are immensely complex, chaotic and are developed within a highly
dynamic environment. There are numerous researches from multiple areas
intending to take on that challenge, and Machine Learning approaches have been
the focus of many of them. There are multiple models of Machine Learning
algorithms been able to obtain competent outcomes doing that class of
foresight. This paper proposes the implementation of a generative adversarial
network (GAN), which is composed by a bi-directional Long short-term memory
(LSTM) and convolutional neural network(CNN) referred as Bi-LSTM-CNN to
generate synthetic data that agree with existing real financial data so the
features of stocks with positive or negative trends can be retained to predict
future trends of a stock. The novelty of this proposed solution that distinct
from previous solutions is that this paper introduced the concept of a hybrid
system (Bi-LSTM-CNN) rather than a sole LSTM model. It was collected data from
multiple stock markets such as TSX, SHCOMP, KOSPI 200 and the S&P 500,
proposing an adaptative-hybrid system for trends prediction on stock market
prices, and carried a comprehensive evaluation on several commonly utilized
machine learning prototypes, and it is concluded that the proposed solution
approach outperforms preceding models. Additionally, during the research stage
from preceding works, gaps were found between investors and researchers who
dedicated to the technical domain.
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