LSTM 신경망에 기반 한 주식시장 예측 연구

Purpose – This study aims to more accurately and effectively predict trends in portfolio prices by building a model using LSTM neural networks, and investigating the risk and profit prediction of investment portfolios. Design/Methodology/Approach – To obtain a return on stocks, this study used 60 mo...

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Published in무역연구 Vol. 19; no. 2; pp. 391 - 407
Main Authors 우월, 김우형, 조용석
Format Journal Article
LanguageKorean
Published 한국무역연구원 30.04.2023
The Korea International Trade Research Institute
Subjects
Online AccessGet full text
ISSN1738-8112
2384-1958

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Abstract Purpose – This study aims to more accurately and effectively predict trends in portfolio prices by building a model using LSTM neural networks, and investigating the risk and profit prediction of investment portfolios. Design/Methodology/Approach – To obtain a return on stocks, this study used 60 monthly transaction data from major countries, including the United States and Korea, for five ETFs, BNDX, BND, VXUS, VTI, and 122630.KS, for five years from January 2016 to December of 2021. In addition, a related portfolio was constructed using modern portfolio theory. Through Min-Max normalization, five ETFs and closing data from April 20 to July 20, 2022 were normalized. The input data were classified into two characteristic dimensions, and an LSTM time series model was constructed with the number of nodes in six hidden layers. Findings – By establishing a portfolio and making regression predictions, it was possible to effectively reduce situations in which prediction accuracy was lowered due to large fluctuations in index-based stocks. Research Implications – The predicted results were tested using OLS regression analysis. The relationship between the risk of building a tangential portfolio with the same composition with different weights, the accuracy of stock price prediction by effectively reducing the low prediction accuracy of highly volatile stocks in the portfolio, and changing the set risk-free interest rate were examined. KCI Citation Count: 0
AbstractList Purpose – This study aims to more accurately and effectively predict trends in portfolio prices by building a model using LSTM neural networks, and investigating the risk and profit prediction of investment portfolios. Design/Methodology/Approach – To obtain a return on stocks, this study used 60 monthly transaction data from major countries, including the United States and Korea, for five ETFs, BNDX, BND, VXUS, VTI, and 122630.KS, for five years from January 2016 to December of 2021. In addition, a related portfolio was constructed using modern portfolio theory. Through Min-Max normalization, five ETFs and closing data from April 20 to July 20, 2022 were normalized. The input data were classified into two characteristic dimensions, and an LSTM time series model was constructed with the number of nodes in six hidden layers. Findings – By establishing a portfolio and making regression predictions, it was possible to effectively reduce situations in which prediction accuracy was lowered due to large fluctuations in index-based stocks. Research Implications – The predicted results were tested using OLS regression analysis. The relationship between the risk of building a tangential portfolio with the same composition with different weights, the accuracy of stock price prediction by effectively reducing the low prediction accuracy of highly volatile stocks in the portfolio, and changing the set risk-free interest rate were examined. KCI Citation Count: 0
Author 우월
조용석
김우형
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DocumentTitleAlternate Stock Market Prediction Based on LSTM Neural Networks
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Keywords Stock Market
LSTM
Min-Max normalization
OLS
Portfolio
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The Korea International Trade Research Institute
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Snippet Purpose – This study aims to more accurately and effectively predict trends in portfolio prices by building a model using LSTM neural networks, and...
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TableOfContents 서론 Ⅱ. 이론적 고찰 Ⅲ. 실증분석 Ⅳ. 실증분석 결과 Ⅴ. 결론 References
Title LSTM 신경망에 기반 한 주식시장 예측 연구
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Volume 19
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