Method and Apparatus for Stock Performance Prediction Using Momentum Strategy along with Social Feedback

Vishu Agarwal, Madhusudan L, HarshaVardhan Babu Namburi
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Abstract

Stock prediction and historical stock data analysis have been of great interest over the decades. The research is wide from classical deterministic algorithms to machine learning models and techniques along with the supply huge amounts of historical data. Volatility and Market Sentiment are key parameters to account for during the construction of any stock prediction model. Commonly used techniques like the n-moving days average is not responsive to swings in the stocks and the information sent and posted online has made a huge effect on investors' opinions on the market, making these the two optimal parameters of prediction. Hence, we present an automatic pipeline that has 2 modules - N-Observation period momentum strategy to identify potential stocks and then a stock holding module that identifies market sentiment using NLP techniques.
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基于动量策略和社会反馈的股票业绩预测方法与装置
几十年来,股票预测和历史股票数据分析一直引起人们极大的兴趣。研究范围从经典的确定性算法到机器学习模型和技术,并提供了大量的历史数据。波动性和市场情绪是任何股票预测模型构建过程中需要考虑的关键参数。常用的n日移动平均线等技术对股票的波动没有反应,而网上发送和发布的信息对投资者对市场的看法产生了巨大影响,这使它们成为预测的两个最佳参数。因此,我们提出了一个自动管道,它有两个模块- n观察期动量策略,用于识别潜在股票,然后是一个股票持有模块,使用NLP技术识别市场情绪。
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