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Since the world of financial markets is becoming much faster, having to do with 'present' data promptly seems impossible and forgetting about unnecessary materials can hardly be done. The paper is aimed to present an innovative real-time market sentiment analysis approach that utilizes NLP and ML with the capture of social, media news source, or financial reports sentiments through a computational algorithm. The methodology is an NLP-based search for sentiment anomalies and uses machine learning algorithms based on historical market data utilized to pattern recognition. By merging these models immediately, it ensures timely changes that stimulate traders and investors to respond with the market when necessary. Finally, the ethical concerns are also considered to ensure there is enough transparency in using sentiment analysis algorithms that rely on automation for financial markets. This non-standard approach aims to transform the sentiments' dynamics reading and reaction of market players. It offers a good navigational aid through the labyrinth of modern financial market. With the objective of providing accurate information on market feelings, this method tried to utilize both NLP and ML in an integrated approach that enables decision-makers to stay a step ahead of trends by developing reasonable decisions.
Singh et al. (Fri,) studied this question.