Publication: Comparative Analysis of Deep Learning Models for Multi-Step Prediction of Financial Time Series
Type:
Article
Date
2020-10-21
Journal Title
Journal ISSN
Volume Title
Publisher
researchgate.net
Abstract
Financial time series prediction has been a key topic of
interest among researchers considering the complexity of the domain
and also due to its significant impact on a wide range of applications. In
contrast to one-step ahead prediction, multi-step forecasting is more
desirable in the industry but the task is more challenging. In recent
days, advancement in deep learning has shown impressive
accomplishments across various tasks including sequence learning and
time series forecasting. Although most previous studies are focused on
applications of deep learning models for single-step ahead prediction,
multi-step financial time series forecasting has not been explored
exhaustively. This paper aims at extensively evaluating the performance
of various state-of-the-art deep learning models for multiple multi-steps
ahead prediction horizons on real-world stock and forex markets dataset.
Specifically, we focus on Long-Short Term Memory (LSTM) network
and its variations, Encoder-Decoder based sequence to sequence models,
Temporal Convolution Network (TCN), hybrid Exponential SmoothingRecurrent Neural Networks (ES-RNN) and Neural Basis Expansion
Analysis for interpretable Time Series forecasting (N-BEATS).
Experimental results show that the latest deep learning models such as NBEATS, ES-LSTM and TCN produced better results for all stock
market related datasets by obtaining around 50% less Root Mean
Squared Error (RMSE) and Mean Absolute Error (MAE) scores for each
prediction horizon as compared to other models. However, the
conventional LSTM-based models still prove to be dominant in the
forex domain by comparatively achieving around 2% less error values.
Description
Keywords
Financial Time Series, Forecasting, Multi-Step Prediction, Deep Learning
Citation
Aryal, Saugat & Nadarajah, Dheynoshan & Rupasinghe, Prabath & Jayawardena, Chandimal & Kasthurirathna, Dharshana. (2020). Comparative Analysis of Deep Learning Models for Multi-Step Prediction of Financial Time Series. Journal of Computer Science. 16. 1401-1416. 10.3844/jcssp.2020.1401.1416.
