大数据分析对孟加拉国股市股价预测的影响:一种机器学习方法

Md Zahidul Islam,  Md Maruful Hoque Chowdhury, Mohammad Momen Sarker
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引用次数: 0

摘要

股票市场是一个波动和复杂的环境,受各种不可预测因素的影响,使准确的股票价格预测具有挑战性。本研究论文探讨了大数据分析和机器学习技术在提高孟加拉国股票市场股价预测准确性方面的潜力和能力。该研究采用的方法包括数据收集过程,其中包括从孟加拉国股票市场收集金融数据,如新闻文章、财务报表、宏观经济指标和历史股票价格。在文献综述的基础上,选择各种基本指标和技术指标作为预测特征。这篇研究论文采用了一种结合技术计算和情感分析的综合方法来预测和预测股市模式。通过采用机器学习和情绪分析技术,该技术在考虑政治事件、经济因素和社交媒体动态影响的同时,为股市提供未来预测。大数据分析的整合使实时预测股市走势成为可能。情感分析算法有助于对推文和新闻文章进行及时和广泛的评估。因此,技术分析和情绪分析的结合大大提高了股市预测的准确性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
The Impact of Big Data Analytics on Stock Price Prediction in the Bangladesh Stock Market: A Machine Learning Approach
The stock market is a volatile and complex environment impacted by various unpredictable factors, making accurate stock price prediction challenging. This research paper explored the potential and capability of big data analytics and machine learning techniques in terms of enhancing stock price prediction accuracy in the setting of the Bangladesh stock market. The methodology adopted in the study entailed a data gathering process, which comprised collecting financial data from the Bangladesh stock market, such as news articles, financial statements, macroeconomic indicators, and historical stock prices. Based on a literature review, various fundamental and technical indicators are chosen as predictive features. The research paper employed a combined methodology that consolidates technical calculations and sentimental analysis to predict and forecast stock market patterns. By adopting machine learning and sentiment analysis techniques, this technique provides future predictions for the stock market while considering the impact of political events, economic factors, and dynamics in social media. The consolidation of big data analytics enables real-time predictions of stock market movements. The sentiment analysis algorithm facilitates prompt and extensive evaluations of tweets and news articles. As a result, the integration of technical and sentiment analyses greatly enhances the accuracy of stock market predictions.
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