Title of article :
Application of Ensemble Machine Learning in the Predictive Data Analytics of Indian Stock Market
Author/Authors :
sigo, marxia oli national institute of technology sikkim - faculty of humanities and social sciences - department of humanities and social sciences, sikkim, india , selvam, murugesan bharathidasan university - department of commerce and financial studies, trichy, india , venkateswar, sankaran trinity university - saint mary’s college, usa , kathiravan, chinnadurai bharathidasan university - department of commerce and financial studies, trichy, india
From page :
128
To page :
150
Abstract :
The world of today is high frequency data driven and characterized by the application and use of information technology for better business development and decision making. The price movements of stock markets are mainly influenced by micro and macro economic variables, legal framework and taxation policies of the respective economies. The crux of the issue lies in exactly forecasting the future stock price movements of individual firms, based on historical or past prices. Achieving the accuracy for forecasting the market trend has become difficult due to the prevalence of stochastic behavior in the stock market and volatility in the stock prices. This paper analyses the stochasticity of movement pattern of the most volatile, fifty company stocks (in terms of market capitalization) of NSE-Nifty, using ensemble machine learning method. The findings of the study would help the investors, to make rational and well informed investment decisions, to optimize the stock returns by investing in the most valuable stocks.
Keywords :
Behavioral finance , Business intelligence , Data science , Ensemble machine learning , Predictive analytics , Stochastic movement of stock markets
Journal title :
Webology
Journal title :
Webology
Record number :
2680509
Link To Document :
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