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Migrating from Developing Asynchronous Multi-threading Programs to Reactive Programs in Java
Andrei Zbarcea,
Cătălin Tudose
Posted: 20 November 2024
Enhancing Communication Networks in the New Era with Artificial Intelligence: Techniques, Applications, and Future Directions
Mohammed El-Hajj
Posted: 19 November 2024
Topological Genomics and Neural Circuits: Bridging Differential Topology and Statistical Mechanics Homology
Richard Murdoch Montgomery
Topological genomics offers a novel framework for understanding how genomic structures influence neural circuit differentiation, integrating principles of differential topology and statistical mechanics homology. This approach examines how genomic topological invariants, such as persistent loops and Betti numbers, correspond to functional transformations in neural circuits. By employing persistent homology to analyze genomic interaction maps and differential topology to model neural circuit formation, we identify key transitions that govern differentiation. Statistical mechanics complements this framework by modeling energy landscapes and phase transitions that reflect the emergent properties of neural architectures. Together, these interdisciplinary methods elucidate the role of topological features in genetic regulation and neural circuit specialization, with implications for neurodevelopment, pathology, and artificial intelligence.
Topological genomics offers a novel framework for understanding how genomic structures influence neural circuit differentiation, integrating principles of differential topology and statistical mechanics homology. This approach examines how genomic topological invariants, such as persistent loops and Betti numbers, correspond to functional transformations in neural circuits. By employing persistent homology to analyze genomic interaction maps and differential topology to model neural circuit formation, we identify key transitions that govern differentiation. Statistical mechanics complements this framework by modeling energy landscapes and phase transitions that reflect the emergent properties of neural architectures. Together, these interdisciplinary methods elucidate the role of topological features in genetic regulation and neural circuit specialization, with implications for neurodevelopment, pathology, and artificial intelligence.
Posted: 19 November 2024
Video Quality Preservation Based on Deep Neural Network
Maciej Kaczyński,
Zbigniew Piotrowski,
Dymitr Pietrow
Posted: 19 November 2024
Enhancing User Experiences in Digital Marketing through Machine Learning: Cases, Trends, and Challenges
Alexios Kaponis,
Manolis Maragoudakis,
Konstantinos Chrysanthos Sofianos
Posted: 19 November 2024
Thermodynamics of Brain Wave Configurations: Temporal Dynamics of Thought, Sensation, and Motor Acts
Richard Murdoch Montgomery
Abstract
This study explores the relationship between thermodynamic principles and the temporal dynamics of brain wave configurations, focusing on the processes underlying thought, sensation, and motor acts. By conceptualizing brain activity as a dynamic system that minimizes free energy, we analyze how energy landscapes govern transitions between cognitive states. Brain wave oscillations, including alpha, beta, theta, and gamma rhythms, are modeled as time-dependent attractors that reflect neural efficiency in processing sensory input and generating motor output. Additionally, we explore the thermodynamic time scales of thought (milliseconds to seconds), sensation (milliseconds), and motor acts (tens to hundreds of milliseconds), revealing how neural systems optimize energy dissipation during these processes. This interdisciplinary approach integrates neural dynamics, thermodynamic laws, and cognitive neuroscience to offer insights into the energetic constraints that shape mental and physical actions.
Abstract
This study explores the relationship between thermodynamic principles and the temporal dynamics of brain wave configurations, focusing on the processes underlying thought, sensation, and motor acts. By conceptualizing brain activity as a dynamic system that minimizes free energy, we analyze how energy landscapes govern transitions between cognitive states. Brain wave oscillations, including alpha, beta, theta, and gamma rhythms, are modeled as time-dependent attractors that reflect neural efficiency in processing sensory input and generating motor output. Additionally, we explore the thermodynamic time scales of thought (milliseconds to seconds), sensation (milliseconds), and motor acts (tens to hundreds of milliseconds), revealing how neural systems optimize energy dissipation during these processes. This interdisciplinary approach integrates neural dynamics, thermodynamic laws, and cognitive neuroscience to offer insights into the energetic constraints that shape mental and physical actions.
Posted: 19 November 2024
SmSeLib: Smart & Secure Libraries-Navigating the Intersection of Machine Learning and Artificial Intelligence
Irin Sultana,
Syed Mustavi Maheen,
Asura Akter Sunna,
Naresh Kshetri
As libraries undergo digital transformation, these technologies redefine current services and create new opportunities for innovation. The research examines the primary applications of Artificial Intelligence (AI) and machine learning in libraries, including information retrieval, automation, and data analysis. This analysis examines how these technologies enhance user experiences, optimize processes, and facilitate personalized solutions. We offer insights into the digital future of libraries through the analysis of current implementations and trends. The study examines the potential advantages and obstacles of integrating AI into library systems, encompassing privacy, ethics, and the evolving responsibilities of librarians. We emphasize innovative strategies for smart library development by integrating new literature and case experiences. This study contributes to the ongoing discourse over the implementation of contemporary technologies in libraries. It offers a prospective perspective on the transformation of these institutions by AI and machine learning, along with a framework for library professionals and policymakers to create more efficient, user-focused, and innovative library services in the digital era, emphasizing the importance of ethical considerations and user-centered design in the advancement of smart libraries. This research explores the emerging concept of "smart libraries" at the intersection of machine learning and artificial intelligence.
As libraries undergo digital transformation, these technologies redefine current services and create new opportunities for innovation. The research examines the primary applications of Artificial Intelligence (AI) and machine learning in libraries, including information retrieval, automation, and data analysis. This analysis examines how these technologies enhance user experiences, optimize processes, and facilitate personalized solutions. We offer insights into the digital future of libraries through the analysis of current implementations and trends. The study examines the potential advantages and obstacles of integrating AI into library systems, encompassing privacy, ethics, and the evolving responsibilities of librarians. We emphasize innovative strategies for smart library development by integrating new literature and case experiences. This study contributes to the ongoing discourse over the implementation of contemporary technologies in libraries. It offers a prospective perspective on the transformation of these institutions by AI and machine learning, along with a framework for library professionals and policymakers to create more efficient, user-focused, and innovative library services in the digital era, emphasizing the importance of ethical considerations and user-centered design in the advancement of smart libraries. This research explores the emerging concept of "smart libraries" at the intersection of machine learning and artificial intelligence.
Posted: 19 November 2024
Enhanced Image Retrieval Using Multiscale Deep Feature Fusion in Supervised Hashing
Amina Belalia,
Kamel Belloulata,
Adil Redaoui
In recent years, deep network-based hashing has emerged as a prominent technique, especially within image retrieval by generating compact and efficient binary representations. However, many existing methods tend to solely focus on extracting semantic information from the final layer, neglecting valuable structural details that encode crucial semantic information. As structural information plays a pivotal role in capturing spatial relationships within images, we propose the enhanced image retrieval using Multiscale Deep Feature Fusion in Supervised Hashing (MDFF-SH), a novel approach that leverages multiscale feature fusion for supervised hashing. The balance between structural information and image retrieval accuracy is pivotal in image hashing and retrieval. Striking this balance ensures both precise retrieval outcomes and meaningful depiction of image structure. Our method leverages multiscale features from multiple convolutional layers, synthesizing them to create robust representations conducive to efficient image retrieval. By combining features from multiple convolutional layers, MDFF-SH captures both local structural information and global semantic context, leading to more robust and accurate image representations. Our model significantly improves retrieval accuracy, achieving higher Mean Average Precision (MAP) than current leading methods on benchmark datasets such as CIFAR-10, NUS-WIDE and MS-COCO with observed gains of 9.5%, 5% and 11.5%, respectively. This study highlights the effectiveness of multiscale feature fusion for high-precision image retrieval.
In recent years, deep network-based hashing has emerged as a prominent technique, especially within image retrieval by generating compact and efficient binary representations. However, many existing methods tend to solely focus on extracting semantic information from the final layer, neglecting valuable structural details that encode crucial semantic information. As structural information plays a pivotal role in capturing spatial relationships within images, we propose the enhanced image retrieval using Multiscale Deep Feature Fusion in Supervised Hashing (MDFF-SH), a novel approach that leverages multiscale feature fusion for supervised hashing. The balance between structural information and image retrieval accuracy is pivotal in image hashing and retrieval. Striking this balance ensures both precise retrieval outcomes and meaningful depiction of image structure. Our method leverages multiscale features from multiple convolutional layers, synthesizing them to create robust representations conducive to efficient image retrieval. By combining features from multiple convolutional layers, MDFF-SH captures both local structural information and global semantic context, leading to more robust and accurate image representations. Our model significantly improves retrieval accuracy, achieving higher Mean Average Precision (MAP) than current leading methods on benchmark datasets such as CIFAR-10, NUS-WIDE and MS-COCO with observed gains of 9.5%, 5% and 11.5%, respectively. This study highlights the effectiveness of multiscale feature fusion for high-precision image retrieval.
Posted: 19 November 2024
An Intrinsic Characterization of Shannon’s and Rényi’s Entropy
Martin Schlather,
Carmen Ditscheid
Posted: 19 November 2024
AI Chatbots in Education: Challenges and Opportunities
Narius Farhad Davar,
M. Ali Akber Dewan,
Xiaokun Zhang
Posted: 19 November 2024
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