AI is used in finance for tasks like automated trading, fraud detection, and risk assessment. It employs machine learning algorithms and data analytics to analyze financial data, predict market trends, and optimize financial operations, enabling faster decision-making and improved efficiency in the finance industry.
Engineers demonstrate how Meta Llama 3, integrated with ChromaDB on AWS, can generate accurate SQL queries from natural language using advanced prompt engineering techniques.
Research paper examines the complexities of global AI governance, proposing a cautious approach to developing an international regulatory framework that balances innovation with ethical and societal needs.
This paper explores advanced drowning prevention technologies that integrate embedded systems, artificial intelligence (AI), and the Internet of Things (IoT) to enhance real-time monitoring and response in swimming pools. By utilizing computer vision and deep learning for accurate situation identification and IoT for real-time alerts, these systems significantly improve rescue efficiency and reduce drowning incidents
In a comparative study, stochastic models, especially the CIR model, outperformed machine learning algorithms in predicting stock indices across various sectors. While machine learning showed flexibility, optimizing hyperparameters is crucial for enhancing its predictive performance, suggesting a hybrid approach for future forecasts.
Researchers leverage AI to optimize the design, fabrication, and performance forecasting of diffractive optical elements (DOEs). This integration accelerates innovation in optical technology, enhancing applications in imaging, sensing, and telecommunications.
Researchers utilized deep learning techniques to detect anomalies in the European banking sector, finding significant correlations between European Banking Authority events and banking anomalies.
Researchers applied multiple machine learning techniques to predict the unconfined compressive strength (UCS) of cohesive soil reconstituted with cement and lime. Gradient boosting and k-nearest neighbor models demonstrated the highest accuracy, revealing maximum dry density, consistency limits, and cement content as key factors influencing UCS, providing reliable predictions for engineering applications.
Researchers in the Journal of the Air Transport Research Society evaluated 12 large language models (LLMs) across aviation tasks, revealing varied accuracy in fact retrieval and reasoning capabilities. A survey at Beihang University explored student usage patterns, highlighting optimism for LLMs' potential in aviation while emphasizing the need for improved reliability and safety standards.
Researchers have utilized AI and IoT voice devices to advance sports training feature recognition, employing sensors for real-time data transmission and analysis. This approach successfully identifies movement patterns and predicts athlete states, enhancing training effectiveness.
Integrating blockchain with the Internet of Drones (IoD) promises enhanced security, connectivity, and efficiency in drone applications like delivery, surveillance, and rescue operations.
This paper investigates the prediction of metal commodity futures in financial markets through machine learning (ML) and deep learning (DL) models, analyzing multiple metals simultaneously. Despite promising results, variations in model performance across metals, input periods, and time frames underscore the challenges in consistently outperforming the market.
Researchers explore the application of AI and ML in volatility forecasting, revealing their promise in improving accuracy and informing financial decisions. The review underscores the need for further exploration in explainable AI, uncertainty quantification, and alternative data sources to advance forecasting capabilities.
Researchers introduced a novel memetic training method using coral reef optimization algorithms (CROs) to simultaneously optimize structure and weights of artificial neural networks (ANNs). This dynamic approach showed superior performance in classification accuracy and minority class handling, offering promising advancements in AI optimization for various industries.
Researchers investigated the potential of large language models (LLMs), including GPT and FLAN series, for generating pest management advice in agriculture. Utilizing GPT-4 for evaluation, the study introduced innovative prompting techniques and demonstrated LLMs' effectiveness, particularly GPT-3.5 and GPT-4, in providing accurate and comprehensive advice. Despite FLAN's limitations, the research highlighted the transformative impact of LLMs on pest management practices, emphasizing the importance of contextual information in guiding model responses.
Researchers utilized various machine learning algorithms to develop predictive models for identifying students at risk of dropping out of secondary and higher education in Mexico. Leveraging demographic, socioeconomic, and educational data, the study demonstrated the effectiveness of artificial neural networks (ANN) in achieving high reliability (99%) in predicting school dropout, highlighting key variables such as school attendance, type, location, occupation, income, and marital status.
Researchers dissected the intricate relationship between meta-level and statistical features of tabular datasets, unveiling the impactful role of kurtosis, meta-level ratio, and statistical mean on non-tree-based ML algorithms. This study, based on 200 diverse datasets, provides essential insights for optimizing algorithm selection and understanding the nuanced interplay between dataset characteristics and ML performance.
This study explores the acceptance of chatbots among insurance policyholders. Using the Technology Acceptance Model (TAM), the research emphasizes the crucial role of trust in shaping attitudes and behavioral intentions toward chatbots, providing valuable insights for the insurance industry to enhance customer acceptance and effective implementation of conversational agents.
Researchers from the University of Tuscia, Italy, introduced a machine learning (ML)-based classification model to offer tailored support tools and learning strategies for university students with dyslexia. The model, trained on a self-evaluation questionnaire from over 1200 dyslexic students, demonstrated high accuracy in predicting effective methodologies, providing a personalized approach to enhance learning outcomes and well-being. The study emphasizes the potential applications in education, psychology, and tool/strategy development, encouraging future research directions and student involvement in the design process.
This research addresses the challenge of customer churn in the banking sector using Genetic Algorithm eXtreme Gradient Boosting (GA-XGBoost). The study emphasizes the significance of techniques like SMOTEENN in handling data imbalances and introduces the SHAP interpretation framework for model interpretability. The optimized GA-XGBoost model proves effective in predicting customer churn, offering valuable insights for proactive customer retention strategies in the dynamic banking landscape.
Researchers unveil the Chaotic and Neighborhood Search-based Artificial Bee Colony (CNSABC) algorithm, a groundbreaking variant addressing limitations in traditional Artificial Bee Colony (ABC) for optimization problems. Demonstrating superior convergence speed and solution quality, CNSABC surpasses other algorithms in extensive experiments, showcasing its potential for practical problem-solving, particularly in complex engineering optimization scenarios.
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