Abstract

The stock market is an aggregation of investor sentiment that affects daily changes in stock prices. Investor sentiment remained a mystery and challenge over time, inviting researchers to comprehend the market trends. The entry of behavioral scientists in and around the 1980s brought in the market trading's human dimensions. Shortly after that, due to the digitization of exchanges, the mix of traders changed as institutional traders started using algorithmic trading (AT) on computers. Nevertheless, the effects of investor sentiment did not disappear and continued to intrigue market researchers. Though market sentiment plays a significant role in timing investment decisions, classical finance models largely ignored the role of investor sentiment in asset pricing. For knowing if the market price is value-driven, the investor would isolate components of irrationality from the price, as reflected in the sentiment. Investor sentiment is an expression of irrational expectations of a stock's risk-return profile that is not justified by available information. In this context, the paper aims to predict the next-day trend in the index prices for the centralized Indian National Stock Exchange (NSE) deploying machine learning algorithms like support vector machine, random forest, gradient boosting, and deep neural networks. The training set is historical NSE closing price data from June 1st, 2013-June 30th, 2020. Additionally, the authors factor technical indicators like moving average (MA), moving average convergence-divergence (MACD), K (%) oscillator and corresponding three days moving average D (%), relative strength indicator (RSI) value, and the LW (R%) indicator for the same period. The predictive power of deep neural networks over other machine learning techniques is established in the paper, demonstrating the future scope of deep learning in multi-parameter time series prediction.

Highlights

  • The stock market is an aggregation of sellers and buyers and serves as a platform for exchanging different companies’ stocks

  • 10% of trades are performed by retail traders without the involvement of AT, 40% trades are based on decisions to invest in stock market/index funds/ETFs, and the balance 50% trades are conducted on automatic trading using computers, known as algorithmic trading (AT)

  • This signifies that ensembling the addition of hidden layers for training the model contributing to better understanding the stock price trend and proving to be more effective in identifying instances where ‘buy and sell’ transactions are possible with higher confidence

Read more

Summary

Introduction

The stock market is an aggregation of sellers and buyers and serves as a platform for exchanging different companies’ stocks. Digitization of the stock exchange has facilitated algorithmic trading (AT) on state-of-the-art-machines. According to a World Economic Forum report, over 50% of the trades are on AT. Investors can complete stock market transactions rapidly. In this context, researchers are attempting to measure the implications of trading with modern techniques and tools like Artificial Intelligence and robotics in a market where human biases dominate. According to a report of the World Economic Forum, the global market is witnessing a new trend. 10% of trades are performed by retail traders without the involvement of AT, 40% trades are based on decisions to invest in stock market/index funds/ETFs, and the balance 50% trades are conducted on automatic trading using computers, known as algorithmic trading (AT). Prediction of the futures markets in the context of AT is an exciting area for further research

Methods
Results
Discussion
Conclusion
Full Text
Published version (Free)

Talk to us

Join us for a 30 min session where you can share your feedback and ask us any queries you have

Schedule a call