Time Series Analysis of Stock Index Forecasting

Thesis title: Time Series Analysis of Stock Index Forecasting
Author: Zheng, Yue
Thesis type: Diploma thesis
Supervisor: Šimpach, Ondřej
Opponents: Helman, Karel
Thesis language: English
Abstract:
This thesis investigates stock market forecasting by comparing traditional time series models (ARIMA-GARCH), deep learning models (LSTM), and a hybrid ARIMA-LSTM model, focusing on the S&P 500, Euro Stoxx 50, and CSI 300 indices. Accuracy is evaluated using Root Mean Square Error (RMSE) and Mean Absolute Error (MAE), with findings indicating varying model effectiveness based on specific market data characteristics. The ARIMA-LSTM hybrid model excels in markets with strong autocorrelation, such as the S&P 500, demonstrating its ability to capture both linear and non-linear dynamics. In contrast, the single LSTM model is more effective in markets like the Euro Stoxx 50 and CSI 300, where weaker autocorrelation is present.
Keywords: ARIMA; LSTM; stock index; time series
Thesis title: Time Series Analysis of Stock Index Forecasting
Author: Zheng, Yue
Thesis type: Diplomová práce
Supervisor: Šimpach, Ondřej
Opponents: Helman, Karel
Thesis language: English
Abstract:
This thesis investigates stock market forecasting by comparing traditional time series models (ARIMA-GARCH), deep learning models (LSTM), and a hybrid ARIMA-LSTM model, focusing on the S&P 500, Euro Stoxx 50, and CSI 300 indices. Accuracy is evaluated using Root Mean Square Error (RMSE) and Mean Absolute Error (MAE), with findings indicating varying model effectiveness based on specific market data characteristics. The ARIMA-LSTM hybrid model excels in markets with strong autocorrelation, such as the S&P 500, demonstrating its ability to capture both linear and non-linear dynamics. In contrast, the single LSTM model is more effective in markets like the Euro Stoxx 50 and CSI 300, where weaker autocorrelation is present.
Keywords: time series; stock index; ARIMA; LSTM

Information about study

Study programme: Economic Data Analysis/Data Analysis and Modeling
Type of study programme: Magisterský studijní program
Assigned degree: Ing.
Institutions assigning academic degree: Vysoká škola ekonomická v Praze
Faculty: Faculty of Informatics and Statistics
Department: Department of Statistics and Probability

Information on submission and defense

Date of assignment: 2. 11. 2022
Date of submission: 4. 12. 2023
Date of defense: 29. 1. 2024
Identifier in the InSIS system: https://insis.vse.cz/zp/82621/podrobnosti

Files for download

    Last update: