Abstract
The construction industry is one of the main contributors to the social and economic development of any country, and the growth of the industry is highly dependent on the financial success of construction companies. Contractors are usually impacted financially by external factors such as the fluctuating material prices and challenging macroeconomic conditions, making it difficult for the company’s executives to make strategic decisions. The goal of this research is to assess the financial performance and valuate different construction contractors in Egypt by predicting their stock price in the future. This is achieved by developing three artificial intelligence-based models incorporating Long-Short Term Memory (LSTM). The first model would include the macroeconomic indicators with the stock price of each company to investigate how macroeconomic factors affects each company’s stock movement. The second model includes another external factor which is the competitors’ stock price as input variables for the model developed to examine how the market competition could affect each company’s stock price The third model considers internal financial metrics only to determine how the financial health of each company impacts its stock price regardless of the external influence. To develop these models, financial statements of 16 publicly listed contractors in Egypt were gathered to obtain their financial position in the last decade. The input parameters including external factors such as macroeconomic indicators and material prices, and internal factors such as revenues and working capital were used in the model. Correlation analysis was then performed between these identified variables and the stock price to remove any variable with weak correlation. The data was then split into training and testing, and LSTM was used in the developed models to analyse and predict the stock price. The first model provided mean absolute percentage error (MAPE) ranging between 20.62% to 72.8% for the tested companies. The second model provided improved results with reasonable (MAPE) ranging from 19.83% to 27.96%. The final model provided the best performance with MAPE ranging from 12.99% to 19.12%. Therefore, this research provides a comparison of the predictive performance of LSTM models based on macroeconomics indicators, competitor performance, and internal financial metrics specific for each company. This provides decision makers in the construction industry with practical tools to anticipate financial challenges and make strategic decisions to optimize the cash flow and improve their profitability by anticipating revenue fluctuations according to the provided variables. On the other hand, it could be used as a reliable framework for external investors to assess the performance of construction contractors, allowing them to make more informed investment decisions in challenging and emerging markets such as in Egypt.
School
School of Sciences and Engineering
Department
Construction Engineering Department
Degree Name
MS in Construction Engineering
Graduation Date
Fall 2-15-2026
Submission Date
1-26-2026
First Advisor
Dr. Ossama Hosny
Second Advisor
Dr. Ibrahim Abotaleb
Committee Member 1
Dr. Khaled Nassar
Committee Member 2
Dr. Mohamed Mahdy
Committee Member 3
Dr. Ahmed El Gendy
Extent
107 p.
Document Type
Master's Thesis
Institutional Review Board (IRB) Approval
Not necessary for this item
Disclosure of AI Use
Code/algorithm generation and/or validation
Recommended Citation
APA Citation
Youssef, O. M.
(2026).An Artificial Intelligence Framework for Assessing the Financial Performance and Valuation of Construction Contractors in Egypt [Master's Thesis, the American University in Cairo]. AUC Knowledge Fountain.
https://fount.aucegypt.edu/etds/2703
MLA Citation
Youssef, Omar Magdy. An Artificial Intelligence Framework for Assessing the Financial Performance and Valuation of Construction Contractors in Egypt. 2026. American University in Cairo, Master's Thesis. AUC Knowledge Fountain.
https://fount.aucegypt.edu/etds/2703
