SACM - United Kingdom

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    Analyzing the Impact of Economic Policy Uncertainty and Investor Sentiment on Stock Market Dynamics (Returns & Volatility)
    (University of Liverpool, 2024-09-12) Alahmare, Reem; Hizmeri Canales, Rodrigo
    This dissertation investigates the joint effects of Economic Policy Uncertainty (EPU) and investor sentiment on stock market dynamics, particularly focusing on the S&P 500 index. The study integrates sentiment analysis from real-time news and social media data with EPU indices to develop predictive models for stock returns and volatility over a 10-year period (2013-2023). By employing econometric techniques, such as LASSO regression, Ordinary Least Squares (OLS) regression, and GARCH models, the study aims to provide a more comprehensive understanding of how these psychological and macroeconomic factors influence market behavior. The findings highlight that investor sentiment plays a stabilizing role in periods of positive sentiment, reducing market volatility and enhancing stock returns. In contrast, negative sentiment amplifies volatility, especially when combined with high levels of policy uncertainty. EPU, particularly as measured by the News-Based Policy Uncertainty Index, emerges as a critical driver of volatility, affecting market stability during periods of fiscal and trade policy uncertainty. The interaction between sentiment and EPU is shown to provide better predictive accuracy for stock market behavior compared to traditional financial models. The research contributes to the growing body of literature by developing models that integrate real-time sentiment data with EPU, offering more nuanced insights into stock market volatility and returns. The practical implications are significant for both investors and policymakers, providing tools to improve risk management and decision-making. Investors are advised to consider sentiment and policy uncertainty together when assessing market risks, while policymakers are encouraged to ensure transparent communication to minimize uncertainty and stabilize markets. This study advances our understanding of the roles of sentiment and policy uncertainty in financial markets, highlighting their combined influence on stock market volatility and returns, and offering practical strategies for navigating periods of economic uncertainty.
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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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    The Role of Oil Prices, and Inflation on Gold Prices in the Middle East
    (University of Sussex, 2024) Abudawood, Ruwa; Klein, Alexander
    This study investigates the dynamic relationship between oil prices, inflation, and gold prices within the context of Middle Eastern economies. Using advanced econometric techniques, including Vector Error Correction Models (VECM) and cointegration tests, the analysis reveals that fluctuations in oil prices significantly influence gold prices in the region, overshadowing the impact of inflation. Given the heavy reliance of Middle Eastern countries on oil exports, understanding these interconnections is crucial for policymakers, investors, and economic planners. The findings underscore the role of gold as a strategic hedge against oil price volatility and provide actionable insights for improving economic resilience and investment strategies. This research contributes to the broader discourse on commodity markets and macroeconomic stability in oil-dependent regions.
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    The effect of making investment decisions for individual investors in the Saudi stock market
    (Saudi Digital Library, 2023-08-24) Alsulami, Dalal; Scherrer, Cristina
    Behavioural finance plays a significant role in financial markets because it has a positive and negative impact on the financial results of individual investors and even investment institutions. Although conventional financial theory asserts that investors act logically, modern finance theory has shown that individual investors make irrational decisions when it comes to investing. In addition, the factors that affect investment decisions change over time, depending on the situation, the investment environment, the person, the security, etc. For this reason, this study is conducted in Saudi Arabia with the goal of investigating many different perspectives, such as the factors that influence individual investors, the behavioural factors influencing individual investment decisions on the Saudi stock market, and the extent to which behavioural factors influence individual investment decisions in the Saudi stock market. The study uses random sampling to select 70 investors for the primary data, which was collected using questionnaires. The survey has been divided into four sections covering the theory of behavioural finance: herding effect, prospect theory, market effect, and, lastly, anchoring and availability bias. The findings of this study show that behavioural biases (heuristics, prospect theory, herding, market effect, anchoring, and availability bias) have a statistically and hypotheses-tested significant effect on investor decisions in the Saudi stock market (SSM), which suggests that behavioural factors have a substantial impact on SSM investor decisions.
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