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Stock Price Prediction Model using Machine Learning Methods

Published on January 2025 by Ajay Kumar, Rushali Acharya, Raghav Maheshwari
International Conference on Artificial Intelligence and Data Science Applications - 2023
Control System labs
ICAIDSC2023 - Number 2
January 2025
Authors: Ajay Kumar, Rushali Acharya, Raghav Maheshwari
10.5120/icaidsc202414

Ajay Kumar, Rushali Acharya, Raghav Maheshwari . Stock Price Prediction Model using Machine Learning Methods. International Conference on Artificial Intelligence and Data Science Applications - 2023. ICAIDSC2023, 2 (January 2025), 16-19. DOI=10.5120/icaidsc202414

@article{ 10.5120/icaidsc202414,
author = { Ajay Kumar, Rushali Acharya, Raghav Maheshwari },
title = { Stock Price Prediction Model using Machine Learning Methods },
journal = { International Conference on Artificial Intelligence and Data Science Applications - 2023 },
issue_date = { January 2025 },
volume = { ICAIDSC2023 },
number = { 2 },
month = { January },
year = { 2025 },
issn = 0975-8887,
pages = { 16-19 },
numpages = 4,
url = { /proceedings/icaidsc2023/number2/stock-price-prediction-model-using-machine-learning-methods/ },
doi = { 10.5120/icaidsc202414 },
publisher = {Foundation of Computer Science (FCS), NY, USA},
address = {New York, USA}
}
%0 Proceeding Article
%1 International Conference on Artificial Intelligence and Data Science Applications - 2023
%A Ajay Kumar
%A Rushali Acharya
%A Raghav Maheshwari
%T Stock Price Prediction Model using Machine Learning Methods
%J International Conference on Artificial Intelligence and Data Science Applications - 2023
%@ 0975-8887
%V ICAIDSC2023
%N 2
%P 16-19
%D 2025
%I International Journal of Computer Applications
Abstract

In this paper we attempt to implement a machine learning approach to predict stock prices. Machine learning is effectively implemented in forecasting stock prices. The stock market is a collection of agencies wherein investors offer and sell shares and different securities. Publicly traded companies offer shares of ownership to the public, and those shares can be presented and furnished on the stock market. Investors can make money by buying stocks of an employer at a low rate and citing them at a better fee. The inventory market is a key component of the global economy, providing businesses with funding for growth and expansion. It is also a popular way for individuals to invest and enhance their clover over time. There are two types of stocks. LSTMs are very effective in series prediction problems due to the reality they are capable of preserving past statistics. That is essential at stake since the phrase because the preceding fee of an inventory is important in predicting its future price. at the identical time as predicting the real price of a inventory is an uphill climb. The inventory market (or moreover called an trade) is really like another market, but here shares, i.e., stocks of an enterprise are bought and provided. In its handiest shape, humans purchase an available stock of lower price, and because the enterprise grows and its proportion value, aka inventory price, will increase, the stockholder sells it at the marketplace for a profit. The cutting-edge prediction strategies followed for the inventory market together with Artificial Neural network, Time collection Linear fashions (TSLM), Recurrent Neural community (RNN) and their advantages and drawbacks are studied and analysed in this framework paintings. This paper is prepared to speak approximately first-rate techniques related to the prediction of the inventory market.it is easy to study inventory market prediction the usage of device gaining knowledge of initiatives on public boards such as For instance, platforms like Kaggle can be utilized to gain insights into the fundamentals and intermediate aspects of modelling may be created. This is an ever-evolving problem with new solutions being proposed by every generation of researchers and data scientists.

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Index Terms

Computer Science
Information Sciences

Keywords

Artificial Neural Network Hidden Markov Model Data Mining Stock Market Prediction TLSM and RNN