Mehr lesen
This book offers an in-depth exploration of the latest advancements in decision-making systems, with a particular focus on their applications in modern business and control environments. This book presents a comprehensive framework for understanding how complex decision-making processes can be optimized through the integration of artificial intelligence (AI), machine learning, big data, and advanced mathematical models. Throughout the book, readers gain insights into a wide range of decision-making techniques, from predictive analytics and optimization algorithms to multi-criteria decision analysis (MCDA) and risk management. Emphasizing practical applications, the book showcases real-world case studies from various industries, including finance, supply chain management, and healthcare, highlighting how businesses can leverage these cutting-edge systems for improved efficiency, profitability, and strategic decision-making. Key topics include: The role of AI and machine learning in automating and enhancing business decisions, Data-driven decision-making frameworks, including big data analytics and real-time decision support, Optimization methods used to solve complex business problems in dynamic environments, Human-machine collaboration and decision support systems (DSS) for effective business operations, Risk, uncertainty, and decision theory in business contexts. With contributions from leading experts in the fields of systems, control, and decision-making, this book serves as an essential resource for researchers, practitioners, and students interested in the intersection of business management, advanced technology, and decision science. Whether you are seeking to understand the theoretical foundations or explore practical applications, this book provides a thorough, accessible, and forward-looking examination of the future of decision-making systems in business.
Inhaltsverzeichnis
Predicting Early Stage Venture Creation The Role of Entrepreneurial Traits and Country Context.- Mapping the Research Landscape on Accounting Employability Skills A Bibliometric Analysis.- Relationship between Social Connectedness and Subjective Well- being among Gen Z population The Moderating Role of Fear of Missing Out.- Understanding the Relationship Between Goal Oriented Attitude, Cognitive Flexibility, and Mindfulness among College Students.- A bibliometric investigation into the evolving consumer behavior and market dynamics.- Shifting Tourist Flows among Emerging Tourism Source Markets in Southeast Asia.- Employer Branding and Psychological Contract in Reducing Turnover Intention A Systematic Literature Review.- Global Practices in Technology Business Incubation A Systematic Review with Implications for Philippine State Universities and Colleges.- U S Sector Equity and Safe Haven Commodities Assessing Risk Mitigation in Times of Global Turmoil.- Plant Disease Categorization Through Hybrid Machine Learning Methods of Deep Learning.
Zusammenfassung
This book offers an in-depth exploration of the latest advancements in decision-making systems, with a particular focus on their applications in modern business and control environments. This book presents a comprehensive framework for understanding how complex decision-making processes can be optimized through the integration of artificial intelligence (AI), machine learning, big data, and advanced mathematical models. Throughout the book, readers gain insights into a wide range of decision-making techniques, from predictive analytics and optimization algorithms to multi-criteria decision analysis (MCDA) and risk management. Emphasizing practical applications, the book showcases real-world case studies from various industries, including finance, supply chain management, and healthcare, highlighting how businesses can leverage these cutting-edge systems for improved efficiency, profitability, and strategic decision-making. Key topics include: The role of AI and machine learning in automating and enhancing business decisions, Data-driven decision-making frameworks, including big data analytics and real-time decision support, Optimization methods used to solve complex business problems in dynamic environments, Human-machine collaboration and decision support systems (DSS) for effective business operations, Risk, uncertainty, and decision theory in business contexts. With contributions from leading experts in the fields of systems, control, and decision-making, this book serves as an essential resource for researchers, practitioners, and students interested in the intersection of business management, advanced technology, and decision science. Whether you are seeking to understand the theoretical foundations or explore practical applications, this book provides a thorough, accessible, and forward-looking examination of the future of decision-making systems in business.