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논문 기본 정보

자료유형
학술저널
저자정보
(Kazakh-British Technical University) (Kazakh-British Technical University) (Kazakh-British Technical University) (Kazakh-British Technical University) (Korea National University of Transportation)
저널정보
대한전기학회 전기학회논문지 전기학회논문지 제75권 제3호
발행연도
수록면
658 - 666 (9page)
DOI
10.5370/KIEE.2026.75.3.658

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초록· 키워드

Forecasting dynamics in financial markets remains a central yet unresolved challenge due to their inherent volatility, nonlinear dependence, and the presence of structural breaks and seasonality. The accurate modeling of stock price movements is not only of theoretical significance but also of considerable practical relevance for investment strategy design, portfolio optimization and systemic risk management. In this study, we investigated a comprehensive comparative analysis of forecasting techniques, encompassing both classical statistical models and modern machine learning approaches specifically adapted for time series prediction. Traditional econometric methods, as generalized autoregressive conditional heteroskedasticity (GARCH) and autoregressive integrated moving average (ARIMA) were systematically evaluated alongside conventional machine learning algorithms, including linear regression and support vector machines (SVM). Beyond these baselines, we assessed the predictive capacity of advanced neural network architectures, with particular emphasis on long short-term memory (LSTM) networks and convolutional neural networks (CNN), which are designed to capture long-range temporal dependencies and nonlinear feature interactions. Empirical experiments conducted on real stock market datasets allow for a rigorous performance assessment under diverse market regimes. The results demonstrated differentiated strengths across methods, where statistical models retain interpretability and robustness, while deep learning approaches yield superior accuracy in highly volatile environments. The study concludes with evidence-based recommendations concerning methodological suitability for varying forecasting horizons and financial application scenarios.
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목차

  1. Abstract
  2. 1. Introduction
  3. 2. Literature Review and Used Algorithms
  4. 3. Methodology
  5. 4. Data Collection
  6. 5. Results and Discussion
  7. 6. Conclusion
  8. References

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