Abstract
Short-term investments, particularly in
stock index futures, have attracted significant interest among day traders
seeking quick returns. However, consistently generating profits remains
challenging due to suboptimal trading policies. To address this, our study
explores the potential of artificial intelligence, specifically deep learning,
in predicting optimal turnover rates for short-term stock index transactions.
Through empirical methods and an extensive analysis of over 30,000 datasets, we
examine the impact of turnover rates on prediction performance. Our findings
highlight the substantial influence of higher turnover rates on day traders'
profitability in short-term investments. Notably, our deep learning algorithm
achieves an exceptional accuracy rate of 93.25% in predicting longer turnover
rates. By elucidating the relationship between turnover rates and financial
forecasting, this research offers a novel perspective to the existing
literature. Traders can leverage these insights to make informed decisions,
enhancing the potential for more consistent and profitable outcomes in their
short-term investment strategies. Ultimately, this study empowers day traders
with valuable knowledge, providing a pathway to navigate the challenges of
achieving sustained success in short-term investments.
Keywords: Short-term Investments, Stock Index Futures, Artificial
Intelligence Techniques, Turnover Rates, Financial Forecasting.