ABSTRACT
Stock market prediction is an essential and challenging task. Prediction plays an important role in the stock market as investors make their decisions based on future forecasting. There are many methods and tools available to predict prices to increase profits and minimize risks. Machine learning algorithms are widely used in stock market prediction. In this article, we will explore the popular ARIMA forecasting model to predict returns on stock from stock market data.
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- ARIMA Model for Stock Market Prediction
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