领导者声音对金融市场的影响:纳斯达克、NSE 及其他市场的深度学习实证考察

Arijit Das, Tanmoy Nandi, Prasanta Saha, Suman Das, Saronyo Mukherjee, Sudip Kumar Naskar, Diganta Saha
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摘要

股票、股份、黄金、石油、共同基金等金融市场的价格都会受到社交媒体上的新闻和帖子的影响。在这项工作中,我们提出了基于深度学习的模型,根据对不同领域领袖的 twitter 标签进行的 NLP 分析来预测金融市场的趋势。目前有许多仅基于金融部分历史数据预测金融市场的模型,但本研究的主要目标是将历史数据与 Twitter 等社交媒体上的新闻和帖子相结合。本工作的主要特点是:a) 提出了完全通用的算法,能够为任何 twitter 句柄和任何金融组件生成模型;b) 预测推文对股价影响的时间窗口;c) 分析多个 twitter 句柄对预测趋势的影响。我们进行了详细调查,以了解近年来类似领域的最新研究成果,找出研究空白,并收集分析和预测所需的数据。提出了最先进的算法,并给出了完整的实现环境。通过对金融市场组成部分的 twitter 数据进行 NLP 分析,显示了结果改进的深刻趋势。本研究探讨了印度和美国的金融市场,未来还将探讨其他市场。最后讨论了本研究的社会经济影响。
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Effect of Leaders Voice on Financial Market: An Empirical Deep Learning Expedition on NASDAQ, NSE, and Beyond
Financial market like the price of stock, share, gold, oil, mutual funds are affected by the news and posts on social media. In this work deep learning based models are proposed to predict the trend of financial market based on NLP analysis of the twitter handles of leaders of different fields. There are many models available to predict financial market based on only the historical data of the financial component but combining historical data with news and posts of the social media like Twitter is the main objective of the present work. Substantial improvement is shown in the result. The main features of the present work are: a) proposing completely generalized algorithm which is able to generate models for any twitter handle and any financial component, b) predicting the time window for a tweets effect on a stock price c) analyzing the effect of multiple twitter handles for predicting the trend. A detailed survey is done to find out the latest work in recent years in the similar field, find the research gap, and collect the required data for analysis and prediction. State-of-the-art algorithm is proposed and complete implementation with environment is given. An insightful trend of the result improvement considering the NLP analysis of twitter data on financial market components is shown. The Indian and USA financial markets are explored in the present work where as other markets can be taken in future. The socio-economic impact of the present work is discussed in conclusion.
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