Al-Qassim Province
LLM-Based Multi-Agent System for Simulating and Analyzing Marketing and Consumer Behavior
Chu, Man-Lin, Terhorst, Lucian, Reed, Kadin, Ni, Tom, Chen, Weiwei, Lin, Rongyu
Preprint Notice This is the author-accepted manuscript (AAM) of the paper "LLM-Based Multi-Agent System for Simulating and Analyzing Marketing and Consumer Behavior, " accepted for publication in the IEEE International Conference on e-Business Engineering (ICEBE 2025), to be held 10-12 November 2025 at Mustaqbal University, Buraydah, Saudi Arabia. Personal use of this material is permitted. Permission from IEEE must be obtained for all other uses, including reprinting or republishing, or for creating derivative Abstract--Simulating consumer decision-making is vital for designing and evaluating marketing strategies before costly real-world deployment. However, post-event analyses and rule-based agent-based models (ABMs) struggle to capture the complexity of human behavior and social interaction. We introduce an LLM-powered multi-agent simulation framework that models consumer decisions and social dynamics. Building on recent advances in large language model simulation in a sandbox environment, our framework enables generative agents to interact, express internal reasoning, form habits, and make purchasing decisions without predefined rules. In a price-discount marketing scenario, the system delivers actionable strategy-testing outcomes and reveals emergent social patterns beyond the reach of conventional methods. This approach offers marketers a scalable, low-risk tool for pre-implementation testing, reducing reliance on time-intensive post-event evaluations and lowering the risk of underperforming campaigns.
- Asia > Middle East > Saudi Arabia > Al-Qassim Province > Buraydah (0.24)
- North America > United States > Massachusetts > Worcester County > Worcester (0.04)
- North America > United States > Illinois > Cook County > Chicago (0.04)
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- Banking & Finance (0.93)
- Health & Medicine (0.68)
Continuous Saudi Sign Language Recognition: A Vision Transformer Approach
Elhassen, Soukeina, Khuzayem, Lama Al, Alhothali, Areej, Alzamzami, Ohoud, Alowaidi, Nahed
Sign language (SL) is an essential communication form for hearing-impaired and deaf people, enabling engagement within the broader society. Despite its significance, limited public awareness of SL often leads to inequitable access to educational and professional opportunities, thereby contributing to social exclusion, particularly in Saudi Arabia, where over 84,000 individuals depend on Saudi Sign Language (SSL) as their primary form of communication. Although certain technological approaches have helped to improve communication for individuals with hearing impairments, there continues to be an urgent requirement for more precise and dependable translation techniques, especially for Arabic sign language variants like SSL. Most state-of-the-art solutions have primarily focused on non-Arabic sign languages, resulting in a considerable absence of resources dedicated to Arabic sign language, specifically SSL. The complexity of the Arabic language and the prevalence of isolated sign language datasets that concentrate on individual words instead of continuous speech contribute to this issue. To address this gap, our research represents an important step in developing SSL resources. To address this, we introduce the first continuous Saudi Sign Language dataset called KAU-CSSL, focusing on complete sentences to facilitate further research and enable sophisticated recognition systems for SSL recognition and translation. Additionally, we propose a transformer-based model, utilizing a pretrained ResNet-18 for spatial feature extraction and a Transformer Encoder with Bidirectional LSTM for temporal dependencies, achieving 99.02\% accuracy at signer dependent mode and 77.71\% accuracy at signer independent mode. This development leads the way to not only improving communication tools for the SSL community but also making a substantial contribution to the wider field of sign language.
- Asia > Middle East > Saudi Arabia > Mecca Province > Jeddah (0.04)
- Europe > Netherlands (0.04)
- Asia > Middle East > Saudi Arabia > Al-Qassim Province > Buraydah (0.04)
- Health & Medicine > Therapeutic Area (1.00)
- Education > Curriculum > Subject-Specific Education (1.00)
Computational Intelligence based Land-use Allocation Approaches for Mixed Use Areas
Aosaf, Sabab, Nayeem, Muhammad Ali, Haque, Afsana, Rahman, M Sohel
Urban land-use allocation represents a complex multi-objective optimization problem critical for sustainable urban development policy. This paper presents novel computational intelligence approaches for optimizing land-use allocation in mixed-use areas, addressing inherent trade-offs between land-use compatibility and economic objectives. We develop multiple optimization algorithms, including custom variants integrating differential evolution with multi-objective genetic algorithms. Key contributions include: (1) CR+DES algorithm leveraging scaled difference vectors for enhanced exploration, (2) systematic constraint relaxation strategy improving solution quality while maintaining feasibility, and (3) statistical validation using Kruskal-Wallis tests with compact letter displays. Applied to a real-world case study with 1,290 plots, CR+DES achieves 3.16\% improvement in land-use compatibility compared to state-of-the-art methods, while MSBX+MO excels in price optimization with 3.3\% improvement. Statistical analysis confirms algorithms incorporating difference vectors significantly outperform traditional approaches across multiple metrics. The constraint relaxation technique enables broader solution space exploration while maintaining practical constraints. These findings provide urban planners and policymakers with evidence-based computational tools for balancing competing objectives in land-use allocation, supporting more effective urban development policies in rapidly urbanizing regions.
- Asia > Bangladesh > Dhaka Division > Dhaka District > Dhaka (0.05)
- Asia > China > Beijing > Beijing (0.04)
- North America > United States > Illinois (0.04)
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- Research Report > Promising Solution (0.87)
- Research Report > New Finding (0.67)
Comparative performance of ensemble models in predicting dental provider types: insights from fee-for-service data
Al-Batah, Mohammad Subhi, Alqaraleh, Muhyeeddin, Alzboon, Mowafaq Salem, Alourani, Abdullah
Dental provider classification plays a crucial role in optimizing healthcare resource allocation and policy planning. Effective categorization of providers, such as standard rendering providers and safety net clinic (SNC) providers, enhances service delivery to underserved populations. This study aimed to evaluate the performance of machine learning models in classifying dental providers using a 2018 dataset. A dataset of 24,300 instances with 20 features was analyzed, including beneficiary and service counts across fee-for-service (FFS), Geographic Managed Care, and Pre-Paid Health Plans. Providers were categorized by delivery system and patient age groups (0-20 and 21+). Despite 38.1% missing data, multiple machine learning algorithms were tested, including k-Nearest Neighbors (kNN), Decision Trees, Support Vector Machines (SVM), Stochastic Gradient Descent (SGD), Random Forest, Neural Networks, and Gradient Boosting. A 10-fold cross-validation approach was applied, and models were evaluated using AUC, classification accuracy (CA), F1-score, precision, and recall. Neural Networks achieved the highest AUC (0.975) and CA (94.1%), followed by Random Forest (AUC: 0.948, CA: 93.0%). These models effectively handled imbalanced data and complex feature interactions, outperforming traditional classifiers like Logistic Regression and SVM. Advanced machine learning techniques, particularly ensemble and deep learning models, significantly enhance dental workforce classification. Their integration into healthcare analytics can improve provider identification and resource distribution, benefiting underserved populations.
- North America > United States > California > Los Angeles County (0.04)
- Europe > Switzerland (0.04)
- Asia > Middle East > Saudi Arabia > Al-Qassim Province > Buraydah (0.04)
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- Health & Medicine > Therapeutic Area > Dental and Oral Health (0.93)
- Health & Medicine > Consumer Health (0.88)
- Health & Medicine > Therapeutic Area > Oncology (0.68)
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- Information Technology > Artificial Intelligence > Machine Learning > Statistical Learning (1.00)
- Information Technology > Artificial Intelligence > Machine Learning > Performance Analysis > Accuracy (1.00)
- Information Technology > Artificial Intelligence > Machine Learning > Neural Networks > Deep Learning (1.00)
MoxE: Mixture of xLSTM Experts with Entropy-Aware Routing for Efficient Language Modeling
Thiombiano, Abdoul Majid O., Hnich, Brahim, Mrad, Ali Ben, Mkaouer, Mohamed Wiem
However, the quadratic complexityO ( n 2) of the attention mechanism (wheren is the sequence length) makes it computationally expensive to train and deploy large models, particularly for long sequences. This inherent limitation poses significant challenges for scalability and efficiency in real-world applications. One highly effective technique widely adopted to mitigate these challenges in training and deploying such massive models is the Mixture of Experts (MoE) framework [5, 11]. By design, in a MoE architecture, at inference time, the model intelligently utilizes only a sparse subset of its total parameters to process each input, leading to a dramatic reduction in the computational requirements at runtime and enabling more efficient scaling. The sparse MoE approach has been successfully applied to various models, demonstrating significant improvements in efficiency while maintaining or even enhancing performance [2]. Traditional Long Short-Term Memory (LSTM) networks, while demonstrably powerful in sequence modeling, inherently struggle with effectively managing long-term dependencies and achieving efficient associative recall, particularly when dealing with extended sequences. The Extended Long Short-Term Memory (xLSTM) architecture [1] directly addresses these fundamental limitations by introducing novel memory structures and optimized computation approaches within the LSTM unit itself.
- North America > United States > Michigan > Genesee County > Flint (0.14)
- Africa > Middle East > Tunisia (0.04)
- Asia > Middle East > Saudi Arabia > Al-Qassim Province > Buraydah (0.04)
- Asia > Middle East > Jordan (0.04)
Comparison of Epilepsy Induced by Ischemic Hypoxic Brain Injury and Hypoglycemic Brain Injury using Multilevel Fusion of Data Features
Kadem, Sameer, Sami, Noor, Elaraby, Ahmed, Alyousif, Shahad, Jalil, Mohammed, Altaee, M., Almusawi, Muntather, Ismaeel, A. Ghany, Kareem, Ali Kamil, Kamalrudin, Massila, ftaiet, Adnan Allwi
The study aims to investigate the similarities and differences in the brain damage caused by Hypoxia-Ischemia (HI), Hypoglycemia, and Epilepsy. Hypoglycemia poses a significant challenge in improving glycemic regulation for insulin-treated patients, while HI brain disease in neonates is associated with low oxygen levels. The study examines the possibility of using a combination of medical data and Electroencephalography (EEG) measurements to predict outcomes over a two-year period. The study employs a multilevel fusion of data features to enhance the accuracy of the predictions. Therefore this paper suggests a hybridized classification model for Hypoxia-Ischemia and Hypoglycemia, Epilepsy brain injury (HCM-BI). A Support Vector Machine is applied with clinical details to define the Hypoxia-Ischemia outcomes of each infant. The newborn babies are assessed every two years again to know the neural development results. A selection of four attributes is derived from the Electroencephalography records, and SVM does not get conclusions regarding the classification of diseases. The final feature extraction of the EEG signal is optimized by the Bayesian Neural Network (BNN) to get the clear health condition of Hypoglycemia and Epilepsy patients. Through monitoring and assessing physical effects resulting from Electroencephalography, The Bayesian Neural Network (BNN) is used to extract the test samples with the most log data and to report hypoglycemia and epilepsy Keywords- Hypoxia-Ischemia , Hypoglycemia , Epilepsy , Multilevel Fusion of Data Features , Bayesian Neural Network (BNN) , Support Vector Machine (SVM)
- Asia > Middle East > Iraq > Baghdad Governorate > Baghdad (0.04)
- Asia > Middle East > Saudi Arabia > Al-Qassim Province > Buraydah (0.04)
- Europe > United Kingdom (0.04)
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- Research Report > New Finding (0.93)
- Research Report > Experimental Study (0.87)
Optimizing Structured Data Processing through Robotic Process Automation
Bhardwaj, Vivek, Noonia, Ajit, Chaurasia, Sandeep, Kumar, Mukesh, Rashid, Abdulnaser, Othman, Mohamed Tahar Ben
Robotic Process Automation (RPA) has emerged as a game-changing technology in data extraction, revolutionizing the way organizations process and analyze large volumes of documents such as invoices, purchase orders, and payment advices. This study investigates the use of RPA for structured data extraction and evaluates its advantages over manual processes. By comparing human-performed tasks with those executed by RPA software bots, we assess efficiency and accuracy in data extraction from invoices, focusing on the effectiveness of the RPA system. Through four distinct scenarios involving varying numbers of invoices, we measure efficiency in terms of time and effort required for task completion, as well as accuracy by comparing error rates between manual and RPA processes. Our findings highlight the significant efficiency gains achieved by RPA, with bots completing tasks in significantly less time compared to manual efforts across all cases. Moreover, the RPA system consistently achieves perfect accuracy, mitigating the risk of errors and enhancing process reliability. These results underscore the transformative potential of RPA in optimizing operational efficiency, reducing human labor costs, and improving overall business performance.
- Europe > Switzerland (0.04)
- Asia > Singapore (0.04)
- Asia > India > Rajasthan > Jaipur (0.04)
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- Information Technology > Software (0.50)
- Information Technology > Security & Privacy (0.46)
- Information Technology > Artificial Intelligence > Robots (1.00)
- Information Technology > Data Science > Data Mining > Text Mining (0.77)
Optimizing Forest Fire Prevention: Intelligent Scheduling Algorithms for Drone-Based Surveillance System
Jemmali, Mahdi, Melhim, Loai Kayed B., Boulila, Wadii, Amdouni, Hajer, Alharbi, Mafawez T.
Given the importance of forests and their role in maintaining the ecological balance, which directly affects the planet, the climate, and the life on this planet, this research presents the problem of forest fire monitoring using drones. The forest monitoring process is performed continuously to track any changes in the monitored region within the forest. During fires, drones' capture data is used to increase the follow-up speed and enhance the control process of these fires to prevent their spread. The time factor in such problems determines the success rate of the fire extinguishing process, as appropriate data at the right time may be the decisive factor in controlling fires, preventing their spread, extinguishing them, and limiting their losses. Therefore, this research presented the problem of monitoring task scheduling for drones in the forest monitoring system. This problem is solved by developing several algorithms with the aim of minimizing the total completion time required to carry out all the drones' assigned tasks. System performance is measured by using 990 instances of three different classes. The performed experimental results indicated the effectiveness of the proposed algorithms and their ability to act efficiently to achieve the desired goal. The algorithm $RID$ achieved the best performance with a percentage rate of up to 90.3% with a time of 0.088 seconds.
- Africa > Middle East > Tunisia > Tunis Governorate > Tunis (0.04)
- Africa > Middle East > Tunisia > Sousse Governorate > Sousse (0.04)
- Africa > Middle East > Tunisia > Manouba Governorate > Manouba (0.04)
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An Overview of Violence Detection Techniques: Current Challenges and Future Directions
Mumtaz, Nadia, Ejaz, Naveed, Habib, Shabana, Mohsin, Syed Muhammad, Tiwari, Prayag, Band, Shahab S., Kumar, Neeraj
The Big Video Data generated in today's smart cities has raised concerns from its purposeful usage perspective, where surveillance cameras, among many others are the most prominent resources to contribute to the huge volumes of data, making its automated analysis a difficult task in terms of computation and preciseness. Violence Detection (VD), broadly plunging under Action and Activity recognition domain, is used to analyze Big Video data for anomalous actions incurred due to humans. The VD literature is traditionally based on manually engineered features, though advancements to deep learning based standalone models are developed for real-time VD analysis. This paper focuses on overview of deep sequence learning approaches along with localization strategies of the detected violence. This overview also dives into the initial image processing and machine learning-based VD literature and their possible advantages such as efficiency against the current complex models. Furthermore,the datasets are discussed, to provide an analysis of the current models, explaining their pros and cons with future directions in VD domain derived from an in-depth analysis of the previous methods.
- North America > United States > New Mexico > Bernalillo County > Albuquerque (0.04)
- Asia > Pakistan > Islamabad Capital Territory > Islamabad (0.04)
- Europe > Sweden > Halland County > Halmstad (0.04)
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- Research Report > Promising Solution (0.46)
- Health & Medicine (0.93)
- Leisure & Entertainment > Sports (0.70)
- Commercial Services & Supplies > Security & Alarm Services (0.48)
Using UAVs for vehicle tracking and collision risk assessment at intersections
Zong, Shuya, Chen, Sikai, Alinizzi, Majed, Li, Yujie, Labi, Samuel
ABSTRACT Assessing collision risk is a critical challenge to effective traffic safety management. The deployment of unmanned aerial vehicles (UAVs) to address this issue has shown much promise, given their wide visual field and movement flexibility. This research demonstrates the application of UAVs and V2X connectivity to track the movement of road users and assess potential collisions at intersections. The study uses videos captured by UAVs. The proposed method combines deeplearning based tracking algorithms and time-to-collision tasks. The results not only provide beneficial information for vehicle's recognition of potential crashes and motion planning but also provided a valuable tool for urban road agencies and safety management engineers. INTRODUCTION It has been prognosticated that unmanned aerial vehicles (UAVs) will play a vital role in various application or context areas of transportation systems management. This is motivated by the success of UAVs in other domains including photography, photogrammetry, agriculture, terrain mapping, monitoring, disaster relief and rescue operations, and recreational purposes (1). Due to these applications, the emerging global market for drone-enabled services has been valued by the 2016 Middle East and North Africa Business Report at over $127B (2).
- Africa > North Africa (0.24)
- North America > United States > Pennsylvania > Allegheny County > Pittsburgh (0.14)
- North America > United States > Indiana > Tippecanoe County > West Lafayette (0.05)
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- Transportation > Infrastructure & Services (1.00)
- Transportation > Ground > Road (1.00)
- Information Technology (1.00)
- Government (1.00)