Abstract:
The ability to predict the stock trend is one of the most challenging goals for today's traders. The successful prediction of a stock's future trend could yield significa...Show MoreMetadata
Abstract:
The ability to predict the stock trend is one of the most challenging goals for today's traders. The successful prediction of a stock's future trend could yield significant profit. Various machine learning and deep learning have been introduced in the last decades. However, the trade-off between performance and computational complexity was not addressed. This paper aims to find a well-suited model to predict the stock market price trend, with increment in profit gain in Long and Short trading with comparable prediction performance and computational time. A state-of-art machine and deep learning methods have been investigated along with efficient feature engineering. Experimental results show that Feed Forward Neural Network (FFNN) has the best profitability performance (return) and a reasonable running time, among other tested models.
Date of Conference: 17-20 October 2021
Date Added to IEEE Xplore: 06 January 2022
ISBN Information: