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摘要

在股票市场上,跨国公司股票的波动是一个备受关注的重要问题。与20世纪20年代的突然上涨和网络泡沫破灭不同,当代世界从未见过如此大的牛市或熊市,尤其是在过去几十年里。股票市场主要受公众对公司的可信度意见的影响。在21世纪,研究有限责任公司(有限责任公司)的出现,通过揭露非法侵入规范的合法性,通过操纵某公司的股票从卖空中获利,这使得研究人员纳入了当前公众对该公司的情绪,因为卖空是一天的事情。这种曝光的第一个也是最重要的影响将立即被带到Twitter这个可靠的社交媒体上。为了推断情绪分析对股票市场分析的关联性,我们采用了雅虎财经最近曝光的公司的时间序列数据,该公司面临着市场上最大的熊市,时间为07-02-22至03-02-2023,同一时间线的Twitter数据已被社交网络服务(SNS)的刮板访问。每天提取近1000条推文的推文数据由Meta的roBERTa进行分析,这是一个基于NLP(自然语言处理)的情感分析框架。它被用来预测当天市场是看跌还是看涨。然后,情绪标志属性和市场数据属性被用来建立一个三层长短期记忆(LSTM),一个人工神经网络,其中的数据将被预测为当天的股票走势。结果表明,情绪反映在股票的运动中,所提出的工作的准确率约为96.14%。
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Improvising the Stock Prediction by Integrating with roBERTa and LSTM
In the Stock market, the volatility of leading MNCs’(Multi-National Corporations) shares is a major matter of concern and comes under the limelight nowadays. Unlike the 1920s sudden surge and dot-com crash, the contemporary world has never seen such a biggest bull or bear particularly in the past few decades. The stock market is majorly influenced by the credibility opinion of the general public on the firm. In the 21st century, the emergence of research LLC (Limited Liability Company) which gains profit from short selling of the shares by manipulating the share of a certain firm by exposing the legality of trespassing norms has made the researchers include a current public sentiment on the firm since short selling is a matter of one day. The first and foremost impact of such exposure would be instantly taken to Twitter, a credible social media. In order to infer the associativity of sentiment analysis on the stock market analysis we have taken time-series data of a recently exposed firm which faces the biggest bear in the market from Yahoo Finance for the timeline of 07-02-22 to 03-02-2023 and the Twitter data for the same timeline had been accessed by is a scraper for Social Networking Services (SNS). The extracted tweet data with almost 1000 tweets each day has been analyzed by Meta’s roBERTa, an NLP(Natural Language Processing)-based framework for sentiment analysis. It is used to predict whether the market will be bearish or bullish on the day. Then the sentiment flag attribute and the market data attribute have been used to build a 3-layered Long Short Term Memory (LSTM), an ANN(Artificial Neural Network) where the data will be predicted for the same day’s stock movement. The results show that the sentiment reflects on the stock’s movement and the accuracy of the proposed work is about 96.14%.
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