This research paper presents a comparative analysis of three distinct models—GARCH-ANN, VAR, and 3D-CNN—for forecasting S&P 500 prices.
Research Objective:
The study aims to evaluate the effectiveness of each model in predicting future S&P 500 prices by comparing their accuracy based on various error metrics.
Methodology:
The researchers utilize historical S&P 500 data, dividing it into training and testing sets. Each model is trained on the training data and then evaluated based on its performance on the unseen testing data. The study employs error metrics such as Mean Absolute Percentage Error (MAPE), Root Mean Square Error (RMSE), and Thiel's U2 statistic to assess the predictive accuracy of each model.
Key Findings:
The GARCH-LSTM model, a hybrid approach combining GARCH for volatility modeling and LSTM for capturing long-term dependencies, consistently outperforms the VAR and 3D-CNN models across most error metrics. This suggests that accounting for both volatility clustering and sequential patterns in financial data is crucial for accurate forecasting.
Main Conclusions:
The study concludes that the GARCH-LSTM model is the most effective approach for forecasting S&P 500 prices among the three models tested. The superior performance of the GARCH-LSTM model underscores the importance of considering both volatility and long-term dependencies inherent in financial time series data.
Significance:
This research contributes to the field of financial forecasting by providing empirical evidence for the effectiveness of hybrid models like GARCH-LSTM in predicting stock market prices. The findings have practical implications for investors, traders, and financial analysts seeking to make informed decisions based on accurate price forecasts.
Limitations and Future Research:
The study acknowledges limitations such as the reliance on historical data and the potential for overfitting, particularly with complex models like 3D-CNN. Future research could explore the inclusion of additional financial indicators, alternative model architectures, and the impact of external factors on forecasting accuracy.
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by Sydney Anuya... klo arxiv.org 10-22-2024
https://arxiv.org/pdf/2410.16205.pdfSyvällisempiä Kysymyksiä