Modeling and forecasting stock market returns

Thesis title: Modeling and forecasting stock market returns
Author: Jedličková, Zuzana
Thesis type: Diploma thesis
Supervisor: Šimpach, Ondřej
Opponents: Bílková, Diana
Thesis language: English
Abstract:
In this thesis, five models are introduced, discussed, and applied – autoregressive integrated moving average (ARIMA), artificial neural network (ANN), convolutional neural network (CNN), long short-term memory (LSTM) and hybrid CNN+ANN+LSTM. For the analysis, data about daily adjusted closing prices of six pharmaceutical stocks from 1st January till 3rd June 2022 were obtained, transformed into logarithmic returns, and split into training, validation, and testing sets. Models were estimated on the training data, evaluated on the validation set and their performance was compared on the test data. To compare models’ predictive power, the forecast accuracy metric Root Mean Square Error (RMSE) was used. The primary aim of this thesis is to study and explain the concept of introduced models, as well as to construct own models and compare their predictive power in order to answer given research questions. The research questions investigated throughout this thesis are as follows: 1) Is it possible to predict stock market returns with a decent forecast accuracy? 2) Do machine learning algorithms provide with more accurate forecasts than classical ARIMA models?
Keywords: Time series; forecasting; ARIMA; ANN; CNN; LSTM
Thesis title: Modeling and forecasting stock market returns
Author: Jedličková, Zuzana
Thesis type: Diplomová práce
Supervisor: Šimpach, Ondřej
Opponents: Bílková, Diana
Thesis language: English
Abstract:
In this thesis, five models are introduced, discussed, and applied – autoregressive integrated moving average (ARIMA), artificial neural network (ANN), convolutional neural network (CNN), long short-term memory (LSTM) and hybrid CNN+ANN+LSTM. For the analysis, data about daily adjusted closing prices of six pharmaceutical stocks from 1st January till 3rd June 2022 were obtained, transformed into logarithmic returns, and split into training, validation, and testing sets. Models were estimated on the training data, evaluated on the validation set and their performance was compared on the test data. To compare models’ predictive power, the forecast accuracy metric Root Mean Square Error (RMSE) was used. The primary aim of this thesis is to study and explain the concept of introduced models, as well as to construct own models and compare their predictive power in order to answer given research questions. The research questions investigated throughout this thesis are as follows: 1) Is it possible to predict stock market returns with a decent forecast accuracy? 2) Do machine learning algorithms provide with more accurate forecasts than classical ARIMA models?
Keywords: forecasting; Time series; ARIMA; ANN; CNN; 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: 3. 11. 2021
Date of submission: 30. 6. 2022
Date of defense: 25. 8. 2022
Identifier in the InSIS system: https://insis.vse.cz/zp/78643/podrobnosti

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