Stock Price Prediction: LSTM Based Model

Ranjan Roy, K. Ghosh, Apurbalal Senapati
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Abstract

Stock price prediction is a critical field used by most business people and common or retail people who tried to increase their money by value with respect to time. People will either gain money or loss their entire life savings in stock market activity. It is a chaos system. Building an accurate model is complex as variation in price depends on multiple factors such as news, social media data, and fundamentals, production of the company, government bonds, historical price and country's economics factor. Prediction model which considers only one factor might not be accurate. Hence incorporating multiple factors news, social media data and historical price might increase the model's accuracy. This paper tried to incorporate the issue when someone implements it as per the model outcome. It cannot give the proper result when someone implements it in real life since capital market data is very sensitive and news-driven. To avoid such a situation, we use the hedging concept when implemented.
股票价格预测:基于LSTM的模型
股票价格预测是一个重要的领域,大多数商业人士和普通或零售人士都在使用,他们试图通过时间来增加他们的钱的价值。在股票市场活动中,人们要么赚钱,要么损失一生的积蓄。这是一个混乱的系统。建立一个准确的模型是复杂的,因为价格的变化取决于多种因素,如新闻、社交媒体数据、基本面、公司产量、政府债券、历史价格和国家经济因素。只考虑一个因素的预测模型可能不准确。因此,结合新闻、社交媒体数据和历史价格等多种因素,可能会提高模型的准确性。本文试图在有人根据模型结果实现它时合并这个问题。由于资本市场数据非常敏感且受新闻驱动,因此在现实生活中应用它无法得到合适的结果。为了避免这种情况,我们在实施时使用对冲概念。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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