Abstract

Analyzing and forecasting the future trends in stock market is challenging due to the ever increasing size of stock data. Modern techniques extract the stock indicators from the web data to forecast the stock movements. However, most previous studies were based on single source of data for extracting these indicators. This might not be effective in obtaining all the possible diverse factors that influence the market movements. Multi-source data has been rarely applied for stock prediction and even those techniques have limitations in handling larger data. In an attempt to utilize multi-source data more effectively for extracting stock indicators and improve the forecasting accuracy of stock movements, this paper developed a stock market forecasting model using Tolerance based Multi-Agent Deep Reinforcement Learning (TMA-DRL) model. The TMA-DRL model effectively combines the quantitative stock data with the indicators i.e. the events extracted from news data and sentiments extracted from tweets. This forecasting model utilizes Random forests to extract the twitter opinions and Restricted Boltzmann Machine (RBM) for event extraction from news data. Combining these indicators, the TMA-DRL model leads to improved data learning and provides highly accurate prediction of future stock trends. Datasets for evaluation were collected from three sources namely Twitter, Market News and Stock exchange, for 12 months period. Evaluation results illustrate the effectiveness of the proposed TMA-DRL stock market forecasting model which makes predictions with high accuracy and less time complexity.

Highlights

  • Stock market is one of the most vital components of financial markets and active indicator of the nation’s economy [1]

  • This study aims at developing such a technique to utilize the news event extraction and opinion mining from tweets to improve the stock market forecasting

  • This paper aimed at developing an efficient stock market price movements forecasting model to help the investors and economists in determining the future trends in stock markets

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Summary

Introduction

Stock market is one of the most vital components of financial markets and active indicator of the nation’s economy [1]. Forecasting the future stock trends using the historical data is tremendously essential for the market investors to understand the possible increase or decrease of the stock price for determining the investment plans. Investors employ many models to analyze the big market data to predict the price forecasting to minimize the investment risks [2]. The prediction of stock price trends is very challenging and complex due to the varying noise environment and is highly volatile to the daily market values. Irrespective of the techniques and access to larger rich stock indicators, the forecasting of future stock trends is often more difficult [4], [5]. The unstructured quantitative data and the difficulty in extracting useful indicators from these data make the stock prediction more challenging

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