Exploring Different Dynamics of Recurrent Neural Network Methods for Stock Market Prediction - A Comparative Study

The intricate and unpredictable nature of stock markets underscores the importance of precise forecasting for timely detection of downturns and subsequent rebounds. Various factors, including news, rumors surrounding events or companies, market sentiments, and governmental policies, can significantl...

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Main Authors: Ajit Mohan Pattanayak, Aleena Swetapadma, Biswajit Sahoo
Format: Article
Language:English
Published: Taylor & Francis Group 2024-12-01
Series:Applied Artificial Intelligence
Online Access:https://www.tandfonline.com/doi/10.1080/08839514.2024.2371706
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author Ajit Mohan Pattanayak
Aleena Swetapadma
Biswajit Sahoo
author_facet Ajit Mohan Pattanayak
Aleena Swetapadma
Biswajit Sahoo
author_sort Ajit Mohan Pattanayak
collection DOAJ
description The intricate and unpredictable nature of stock markets underscores the importance of precise forecasting for timely detection of downturns and subsequent rebounds. Various factors, including news, rumors surrounding events or companies, market sentiments, and governmental policies, can significantly impact stock prices. Nevertheless, the precision of current methods remained insufficient until the adoption of artificial neural network architectures like long short-term memory (LSTM). The aim of this study is to create a precise AI-driven platform tailored for both the Indian and international stock markets. This platform is designed to assist retail investors in navigating digital environments by employing various LSTM algorithms. Its primary goals include predicting stock price fluctuations, pinpointing potential investment prospects, and refining trading strategies. The application aims to leverage advanced LSTM algorithms to analyze historical market data, recognize patterns, and provide real-time insights. It will take past price and process it through LSTM algorithms to take a logical decision. In the quest to broaden retail participation in the capital markets, the effort is to develop an application for novice investors who either have no time in research or are the victims of financial mis-selling and enable them to leverage the technology to their advantage.
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spelling doaj-art-b2183a026e5a4bf6bdf9cabaf7258e1c2024-12-16T16:13:01ZengTaylor & Francis GroupApplied Artificial Intelligence0883-95141087-65452024-12-0138110.1080/08839514.2024.2371706Exploring Different Dynamics of Recurrent Neural Network Methods for Stock Market Prediction - A Comparative StudyAjit Mohan Pattanayak0Aleena Swetapadma1Biswajit Sahoo2School of Computer Engineering, KIIT deemed to be University, Bhubaneswar, IndiaSchool of Computer Engineering, KIIT deemed to be University, Bhubaneswar, IndiaSchool of Computer Engineering, KIIT deemed to be University, Bhubaneswar, IndiaThe intricate and unpredictable nature of stock markets underscores the importance of precise forecasting for timely detection of downturns and subsequent rebounds. Various factors, including news, rumors surrounding events or companies, market sentiments, and governmental policies, can significantly impact stock prices. Nevertheless, the precision of current methods remained insufficient until the adoption of artificial neural network architectures like long short-term memory (LSTM). The aim of this study is to create a precise AI-driven platform tailored for both the Indian and international stock markets. This platform is designed to assist retail investors in navigating digital environments by employing various LSTM algorithms. Its primary goals include predicting stock price fluctuations, pinpointing potential investment prospects, and refining trading strategies. The application aims to leverage advanced LSTM algorithms to analyze historical market data, recognize patterns, and provide real-time insights. It will take past price and process it through LSTM algorithms to take a logical decision. In the quest to broaden retail participation in the capital markets, the effort is to develop an application for novice investors who either have no time in research or are the victims of financial mis-selling and enable them to leverage the technology to their advantage.https://www.tandfonline.com/doi/10.1080/08839514.2024.2371706
spellingShingle Ajit Mohan Pattanayak
Aleena Swetapadma
Biswajit Sahoo
Exploring Different Dynamics of Recurrent Neural Network Methods for Stock Market Prediction - A Comparative Study
Applied Artificial Intelligence
title Exploring Different Dynamics of Recurrent Neural Network Methods for Stock Market Prediction - A Comparative Study
title_full Exploring Different Dynamics of Recurrent Neural Network Methods for Stock Market Prediction - A Comparative Study
title_fullStr Exploring Different Dynamics of Recurrent Neural Network Methods for Stock Market Prediction - A Comparative Study
title_full_unstemmed Exploring Different Dynamics of Recurrent Neural Network Methods for Stock Market Prediction - A Comparative Study
title_short Exploring Different Dynamics of Recurrent Neural Network Methods for Stock Market Prediction - A Comparative Study
title_sort exploring different dynamics of recurrent neural network methods for stock market prediction a comparative study
url https://www.tandfonline.com/doi/10.1080/08839514.2024.2371706
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AT biswajitsahoo exploringdifferentdynamicsofrecurrentneuralnetworkmethodsforstockmarketpredictionacomparativestudy