Saudi Cultural Missions Theses & Dissertations
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Item Restricted Evaluating Chess Moves by Analysing Sentiments in Teaching Textbooks(the University of Manchester, 2025) Alrdahi, Haifa Saleh T; Batista-navarro, RizaThe rules of playing chess are simple to comprehend, and yet it is challenging to make accurate decisions in the game. Hence, chess lends itself well to the development of an artificial intelligence (AI) system that simulates real-life problems, such as in decision-making processes. Learning chess strategies has been widely investigated, with most studies focused on learning from previous games using search algorithms. Chess textbooks encapsulate grandmaster knowledge, which explains playing strategies. This thesis investigates three research questions on the possibility of unlocking hidden knowledge in chess teaching textbooks. Firstly, we contribute to the chess domain with a new heterogeneous chess dataset “LEAP”, consists of structured data that represents the environment “board state”, and unstructured data that represent explanation of strategic moves. Additionally, we build a larger unstructured synthetic chess dataset to improve large language models familiarity with the chess teaching context. With the LEAP dataset, we examined the characteristics of chess teaching textbooks and the challenges of using such a data source for training Natural Language (NL)-based chess agent. We show by empirical experiments that following the common approach of sentence-level evaluation of moves are not insightful. Secondly, we observed that chess teaching textbooks are focused on explanation of the move’s outcome for both players alongside discussing multiple moves in one sentence, which confused the models in move evaluation. To address this, we introduce an auxiliary task by using verb phrase-level to evaluate the individual moves. Furthermore, we show by empirical experiments the usefulness of adopting the Aspect-based Sentiment Analysis (ABSA) approach as an evaluation method of chess moves expressed in free-text. With this, we have developed a fine-grained annotation and a small-scale dataset for the chess-ABSA domain “ASSESS”. Finally we examined the performance of a fine-tuned LLM encoder model for chess-ABSA and showed that the performance of the model for evaluating chess moves is comparable to scores obtained from a chess engine, Stockfish. Thirdly, we developed an instruction-based explanation framework, using prompt engineering with zero-shot learning to generate an explanation text of the move outcome. The framework also used a chess ABSA decoder model that uses an instructions format and evaluated its performance on the ASSESS dataset, which shows an overall improvement performance. Finally, we evaluate the performance of the framework and discuss the possibilities and current challenges of generating large-scale unstructured data for the chess, and the effect on the chess-ABSA decoder model.9 0Item Restricted 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, RodrigoThis 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.12 0Item Restricted Developing a Generative AI Model to Enhance Sentiment Analysis for the Saudi Dialect(Texas Tech University, 2024-12) Aftan, Sulaiman; Zhuang, YuSentiment Analysis (SA) is a fundamental task in Natural Language Processing (NLP) with broad applications across various real-world domains. While Arabic is a globally significant language with several well-developed NLP models for its standard form, achieving high performance in sentiment analysis for the Saudi Dialect (SD) remains challenging. A key factor contributing to this difficulty is inadequate SD datasets for training of NLP models. This study introduces a novel method for adapting a high-resource language model to a closely related but low-resource dialect by combining moderate effort in SD data collection with generative AI to address this problem of inadequacy in SD datasets. Then, AraBERT was fine-tuned using a combination of collected SD data and additional SD data generated by GPT. The results demonstrate a significant improvement in SD sentiment analysis performance compared to the AraBERT model, which is fine-tuned with only collected SD datasets. This approach highlights an efficient approach to generating high-quality datasets for fine-tuning a model trained on a high-resource language to perform well in a low-resource dialect. Leveraging generative AI enables reduced effort in data collection, making our approach a promising avenue for future research in low-resource NLP tasks.37 0Item Restricted Navigating Arabic Sentiments: An Evaluation of Multilingual and Arabic Dedicated Large Language Models(University of Exeter, 2024) Altowairqi, Hadeel; Menezes, RonaldoExpressing emotions in written text, especially in Arabic with its complex structure and poetic elements, can be challenging.While body language enriches spoken communication with emotional depth, written Arabic often lacks this nuance. The advent of Large Language Models (LLMs) has revolutionized natural language processing (NLP), excelling in tasks like text generation and sentiment analysis. However, the performance of these models varies significantly depending on the language and task. Arabic poses unique challenges due to its complex morphology and diverse dialects. This research investigates the impact of LLMs, particularly those tailored for Arabic, on the emotional depth of the written text. By evaluating how these models modify expressions, the study aims to understand whether LLMs preserve or constrain the intricate emotional nuances inherent in Arabic. The findings will contribute to the development of more effective AI tools for digital communication in the Arabic-speaking world, enhancing applications in fields such as sentiment analysis, opinion mining, and content moderation. Through a comprehensive analysis of over 81,000 Arabic texts, including tweets and book reviews, the study examines the performance of the general-purpose LLM ChatGPT and the Arabic-specific LLM JAIS, focusing on the sentiment shifts introduced by their edits. The results reveal a significant tendency of these models to introduce a positive bias, reducing the frequency of extremely negative sentiments. These insights highlight the necessity of incorporating cultural and linguistic nuances into LLM training data, emphasizing the importance of responsible development and ethical considerations in LLM applications.16 0Item Restricted A Quality Model to Assess Airport Services Using Machine Learning and Natural Language Processing(Cranfield University, 2024-04) Homaid, Mohammed; Moulitsas, IreneIn the dynamic environment of passenger experiences, precisely evaluating passenger satisfaction remains crucial. This thesis is dedicated to the analysis of Airport Service Quality (ASQ) by analysing passenger reviews through sentiment analysis. The research aims to investigate and propose a novel model for assessing ASQ through the application of Machine Learning (ML) and Natural Language Processing (NLP) techniques. It utilises a comprehensive dataset sourced from Skytrax, incorporating both text reviews and numerical ratings. The initial analysis presents challenges for traditional and general NLP techniques when applied to specific domains, such as ASQ, due to limitations like general lexicon dictionaries and pre-compiled stopword lists. To overcome these challenges, a domain-specific sentiment lexicon for airport service reviews is created using the Pointwise Mutual Information (PMI) scoring method. This approach involved replacing the default VADER sentiment scores with those derived from the newly developed lexicon. The outcomes demonstrate that this specialised lexicon for the airport review domain substantially exceeds the benchmarks, delivering consistent and significant enhancements. Moreover, six unique methods for identifying stopwords within the Skytrax review dataset are developed. The research reveals that employing dynamic methods for stopword removal markedly improves the performance of sentiment classification. Deep learning (DL), especially using transformer models, has revolutionised the processing of textual data, achieving unprecedented success. Therefore, novel models are developed through the meticulous development and fine-tuning of advanced deep learning models, specifically Bidirectional Long Short-Term Memory (BiLSTM) and Bidirectional Encoder Representations from Transformers (BERT), tailored for the airport services domain. The results demonstrate superior performance, highlighting the BERT model's exceptional ability to seamlessly blend textual and numerical data. This progress marks a significant improvement upon the current state-of-the-art achievements documented in the existing literature. To encapsulate, this thesis presents a thorough exploration of sentiment analysis, ML and DL methodologies, establishing a framework for the enhancement of ASQ evaluation through detailed analysis of passenger feedback.16 0Item Restricted Exploring the Impact of Sentiment Analysis on Price Prediction(Lehigh University, 2024-07) Zahhar, Abdulkarim Ali Y.; Robinson, Daniel P.The integration of sentiment analysis into predictive models for financial markets, particularly Bitcoin, combines behavioral finance with quantitative analysis. This thesis investigates the extent to which sentiment data, derived from social media platforms such as X (formerly Twitter), can enhance the accuracy of Bitcoin price predictions. A key idea in the study is that public sentiment, as shown on social media, affects Bitcoin’s market prices. The research uses linear regression models that combine Bitcoin’s opening prices with sentiment scores from social media to forecast closing prices. The analysis covers the period from January 2012 to December 2019. Sentiment scores were analyzed using VADER and TextBlob lexicons. The empirical findings show that models incorporating sentiment scores enhance predictive accuracy. For example, incorporating daily average sentiment scores (v avg and B avg) into the models reduced the Mean Squared Error (MSE) from 81184 to 81129 and improved other metrics such as Root Mean Squared Error (RMSE) and Mean Absolute Error (MAE), particularly at specific lag times like 8 and 76 days. These results emphasize the potential benefits of sentiment analysis to improve financial forecasting models. However, it also acknowledges limitations related to the scope of data and the complexities of accurately measuring sentiment. Future research is encouraged to explore more sophisticated models and diverse data sources to further enhance and validate the integration of sentiment analysis in financial forecasting.94 0Item Restricted Exploring Emoji Sentiment Roles in Arabic Textual Content on Digital Social Networks(Saudi Digital Library, 2024-07-09) Hakami, Shatha Ali A; Hendley, Robert; Smith, PhillipIn today’s digital landscape, emoji have risen as pivotal elements in articulating sentiment, especially within the intricacies of the Arabic language. This thesis examines the various roles that emoji can play in expressing sentiment in Arabic texts, highlighting their relevance both in academic and real-world contexts. Beginning with foundational insights, our investigation retraces the history of emoji as important non-verbal communicative tools in human interaction. Then, we explore the distinct challenges of sentiment analysis in Arabic and refer to a thorough review of previous studies to frame our method, identifying both established techniques and unexplored opportunities. At the heart of our research is the understanding that, depending on the context, an emoji can adopt a wide variety of sentiment roles. These range from acting as an indicator, mitigator, emphasizer, reverser, releaser, or trigger of either negative or positive sentiment. Additionally, there are instances where an emoji simply maintains a neutral effect on the sentiment of the accompanying text. To achieve this, we gathered a large dataset, mainly from Twitter, and developed lexicons of words and emoji tailored for sentiment analysis in Arabic. These lexicons were the basis of our analysis model. By leveraging the insights gained from the emoji-roles sentiment lexicon and combining them with our established knowledge of the sentiment roles associated with specific emoji patterns, we make a significant improvement in the conventional sentiment classifier based on the emoji lexicon. Traditional methods often assign a static sentiment score to an emoji, failing to consider its varying roles in different textual contexts. Our refined approach corrects this oversight. Instead of considering a singular unchanging sentiment score for each emoji, the classifier dynamically retrieves sentiment scores based on the specific role the emoji plays within a given sentence. In conclusion, we compare our method with other Arabic sentiment analysis tools, demonstrating the value of our approach, especially within nuanced linguistic phenomena such as sarcasm and humour. This thesis sets the foundation for future Arabic research in this expanding domain.52 0Item Restricted Sentiment Analysis of New Zealand Adults’ and Children’s Tweets Regarding the COVID-19 Vaccination Programme(Saudi Digital Library, 2023-12-02) Aldahmash, Lamyaa; Mpofu, CharlesThe SARS-CoV-2 virus, which caused the global COVID-19 pandemic, necessitated a significant worldwide response, with vaccination being a primary strategy. This dissertation explores the public sentiment towards New Zealand’s national vaccination campaign, through a machine learning analysis of large-scale text data gathered from the social media platform Twitter. Focusing on responses from both adults and children, this research aimed to assess the efficacy of health communication strategies and the wider acceptance of the vaccine within the community. The findings underscore a considerable disparity between policy decisions and public sentiment on Twitter, with a significant portion of the New Zealand population expressing negative views on vaccinations. Overall, this research reveals the need for enhanced public engagement, better communication, and more effective use of social media data by policymakers and healthcare professionals in order to address public concerns, mitigate fears, dispel misinformation, and ultimately increase vaccine uptake.5 0Item Restricted Sentiment Analysis in Online Social Networks(SDL, 2023-05-19) Assery, Ahmad Ali; Zarbaf, MonasadatThe convenience of being able to shop from home has led to the rise of e-commerce in today's highly digitized society. Before buying anything online, customers are required to read hundreds of reviews. Tracking and analyzing customer feedback may be challenging when there are millions of online reviews for a single product. However, in today’s age of machine learning, if a model were used to polarize and comprehend from them, thousands of input and information might be gained quickly and easily. As a result, sentiment analysis has emerged as a distinct field of research that integrates NLP and text analytics to identify and categorize the emotional tone of written content. In this dissertation, we investigate the difficulty of labelling reviews as positive, negative, or neutral. For massive amounts of supervised data, like those seen in the Amazon dataset, we have found success using KNN, Logistic regression, and Random Forest Classifiers. Meanwhile, the greatest results were obtained using the Logistic and random forest classifiers, and we plan to develop a web application using these models to categorize the reviews in real time. Finally, this research delves into sentiment analysis and opinion mining with regards to product feedback.39 0Item Restricted Investigating The Use Of Social Media In Relation To Cognitive Disabilities From The Arab Region(2023) Alshenaifi, Reem; Feng, Jinjuan; Nguyen, NamThis dissertation reports studies on social media usage in relation to cognitive disabilities from the Arab region. The first study investigated how social media is used in supporting and empowering Saudi caregivers of children with cognitive disabilities. Through interviews with 13 caregivers, we examined their motivations and concerns as well as the role of social media during the COVID-19 pandemic. The results suggest that caregivers used social media with caution to seek information and emotional support, to spread awareness, and to communicate and build communities. The findings also suggest that caregivers face a great deal of challenges in security and privacy, social stigma and negative discussions, misinformation, as well as lack of resources. In the second study, we utilized text mining approaches, including sentiment analysis and topic modeling, to examine and understand how Arab users engage with Twitter to discuss cognitive disabilities. Content volume, temporal evolution, users, sentiment, topic discussed were iv analyzed. We applied Valence Aware Dictionary and sEntiment Reasoner (VADER) for sentiment analysis to identify the overall opinions and attitudes toward the researched neurological conditions. We also applied Latent Dirichlet Allocation (LDA) for topic modeling to discover frequent topics in the collected dataset. Additionally, Gephi was used to map the interaction between users discussing cognitive disabilities on Twitter. The results provide new insights into public perspectives, which may assist interested entities to construct and distribute appropriate resources and information. In this dissertation, we presented the analysis techniques, discussed the findings, provided recommendations to interested stakeholders, and introduced potential opportunities and future directions.68 0