Stock Market Predictions Using Machine Learning Techniques

Nagapoojitha D N
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Abstract

Accurately predicting stock market prices is vital in today’s economy, leading researchers to explore novel approaches for forecasting. Recent studies have shown that historical stock data, search engine queries, and social mood from platforms like Twitter and news websites can predict future stock prices. Previous research often lacked comprehensive data, especially concerning social mood. This study presents an effective method to integrate multiple information sources to address this gap and enhance prediction accuracy. We utilized Long Short-Term Memory (LSTM) and Recurrent Neural Network (RNN) models to analyse individual data sources. To further improve prediction accuracy, we employed an ensemble method combining Weighted Average and Differential Evolution techniques. The results yielded precise forecasts for one-day, seven-day, 15-day, and 30- day intervals, providing valuable insights for investors and helping companies gauge their future market performance. Keywords-- Stock market prediction; Sentiment Analysis; Neural Networks; Long-short Term Memory Neural Networks, DJIA, Ensemble Method, Weighted Average
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使用机器学习技术预测股市
准确预测股市价格在当今经济中至关重要,这促使研究人员探索新的预测方法。最近的研究表明,历史股票数据、搜索引擎查询以及来自 Twitter 和新闻网站等平台的社会情绪可以预测未来的股票价格。以往的研究往往缺乏全面的数据,尤其是有关社会情绪的数据。本研究提出了一种整合多种信息源的有效方法,以弥补这一不足并提高预测准确性。我们利用长短期记忆(LSTM)和循环神经网络(RNN)模型来分析各个数据源。为了进一步提高预测精度,我们采用了加权平均和差分进化技术相结合的集合方法。结果得出了 1 天、7 天、15 天和 30 天间隔的精确预测,为投资者提供了宝贵的见解,并帮助公司衡量其未来的市场表现。关键词: 股市预测;情绪分析;神经网络;长短期记忆神经网络;道琼斯工业平均指数;集合法;加权平均法
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