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Applying machine learning algorithms to predict the stock price trend in the stock market - The case of Vietnam

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Applying machine learning algorithms to predict the stock price trend in the stock market - The case of Vietnam

T. Phuoc, P. T. K. Anh, et al.

This study reveals a groundbreaking approach to predicting stock price trends in Vietnam's emerging market using the Long Short-Term Memory (LSTM) algorithm. With an impressive accuracy rate of 93%, the research conducted by Tran Phuoc, Pham Thi Kim Anh, Phan Huy Tam, and Chien V. Nguyen showcases the model's effectiveness in analyzing stock price movements based on technical indicators and key stock data.

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~3 min • Beginner • English
Abstract
The aims of this study are to predict the stock price trend in the stock market in an emerging economy. Using the Long Short Term Memory (LSTM) algorithm, and the corresponding technical analysis indicators for each stock code include: simple moving average (SMA), convergence divergence moving average (MACD), and relative strength index (RSI); and the secondary data from VN-Index and VN-30 stocks, the research results showed that the forecasting model has a high accuracy of 93% for most of the stock data used, demonstrating the appropriateness of the LSTM model and the test set data is used to evaluate the model's performance. The research results showed that the forecasting model has a high accuracy of 93% for most of the stock data used, demonstrating the appropriateness of the LSTM model in analyzing and forecasting stock price movements on the machine learning platform.
Publisher
Humanities & Social Sciences Communications
Published On
Mar 12, 2024
Authors
Tran Phuoc, Pham Thi Kim Anh, Phan Huy Tam, Chien V. Nguyen
Tags
stock price prediction
LSTM algorithm
Vietnam
technical indicators
accuracy
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