Saudi Cultural Missions Theses & Dissertations

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    Green Spaces in Cities: A Comparative Analysis of The New Line City and Riyadh
    (Bournemouth university, 2024) ALMATRUDI, ABDULLAH ABDULRAHMAN; Rick, Stafford
    This study examined green space construction and maintenance in two Saudi Arabian cities: The New Line City (Neom) and Riyadh. Using thematic analysis, the research highlighted the multidimensional advantages of green spaces, assessed their distribution, and identified factors contributing to observed discrepancies. The findings revealed that Neom’s pioneering commitment to sustainability includes integrating nature, employing cutting-edge technology, and engaging communities. In contrast, Riyadh faced challenges in establishing greener settings within existing infrastructure and its large population, despite efforts such as the Green Riyadh project. Economically, both cities benefited from green spaces by increasing property values, tourism revenues, and job opportunities, with Neom potentially offering additional economic opportunities. Socially, green areas enhanced community cohesion and well-being in both cities, while Neom’s community participation approach fostered inclusivity. This study emphasized the importance of strategic planning and management in developing urban green infrastructure to inform future efforts for resilient, inclusive, and sustainable communities.
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    Enhancing Stock Price Prediction Using Machine Learning Models: A Comparative Study of SVM, LSTM, and GRU
    (University College London, 2024-08) AlMohamdy, Razan; Andrea, Ducci
    This study evaluates the effectiveness of three machine learning models—Support Vector Machine (SVM), Long Short-Term Memory (LSTM) networks, and Gated Recurrent Units (GRU)—in predicting the stock prices of Saudi Aramco. Using historical stock price data and technical indicators, the models were assessed based on their accuracy in both long-term and short-term predictions. The findings reveal that LSTM and GRU significantly outperform SVM, with LSTM showing superior performance in capturing long-term dependencies and GRU offering a balance between accuracy and computational efficiency. Specifically, LSTM achieved a Root Mean Squared Error (RMSE) of 0.0516 and a Mean Absolute Error (MAE) of 0.0323, while GRU recorded an RMSE of 0.0539 and an MAE of 0.0234. In contrast, SVM exhibited a much higher RMSE of 0.1712 and an MAE of 0.1079, indicating its struggles with market volatility. The 30-day prediction analysis further highlighted the strengths of LSTM and GRU in short-term forecasting, with both models maintaining an R² value above 0.993, while SVM lagged behind at 0.9332. Despite their advantages, the study identified limitations such as the exclusion of external economic factors and the models' varying effectiveness across different time horizons. These findings contribute to the growing field of financial forecasting, offering practical insights for investors and analysts on model selection. Future research is recommended to incorporate broader economic indicators, explore cross-market validation, and enhance the models' responsiveness to short-term market fluctuations.
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