Reasoning Web. Explainable Artificial Intelligence: 15th International Summer School 2019, Bolzano, Italy, September 20–24, 2019, Tutorial Lectures
4.5
Reviews from our users
You Can Ask your questions from this book's AI after Login
Each download or ask from book AI costs 2 points. To earn more free points, please visit the Points Guide Page and complete some valuable actions.Introduction to "Reasoning Web. Explainable Artificial Intelligence: 15th International Summer School 2019"
Artificial Intelligence (AI) has seen remarkable advancements in recent years, with applications transforming industries, society, and everyday life. However, as AI systems grow more complex, ensuring that their decision-making processes are transparent, comprehensible, and trustworthy becomes increasingly challenging. This is where Explainable Artificial Intelligence (XAI) plays a crucial role.
The book "Reasoning Web: Explainable Artificial Intelligence" captures the spirit of the 15th International Summer School 2019, held in Bolzano, Italy. Featuring a compilation of informative, in-depth tutorial lectures from world-renowned researchers and scholars, it delves into one of the most critical topics in modern AI—explainability. This book bridges the gap between high-level theory and practical methods, blending reasoning, logic, and advanced computer science disciplines to illuminate how we can make AI systems more interpretable and user-friendly without compromising their power.
This volume is a treasure trove for researchers, students, and practitioners interested in advancing their knowledge in Explainable Artificial Intelligence, reasoning systems, and cutting-edge AI technology. What truly sets this book apart is its unique approach to balancing theoretical depth with practical insights, making it both academically rigorous and readily applicable in modern AI scenarios.
A Detailed Summary of the Book
The book is structured around a diverse collection of tutorial lectures delivered during the summer school. Each chapter addresses a unique aspect of Explainable AI, ranging from fundamental principles to advanced methodologies and applications. The authors explore how reasoning-based approaches integrate with traditional AI techniques to enhance interpretability and shed light on the inner workings of black-box models.
Topics covered include the foundations of logic-based reasoning frameworks, knowledge representation, symbolic reasoning, and their intersections with machine learning techniques. Additionally, the book provides insights into hybrid models that combine human-readable explanations with data-driven analytics, ensuring that both performance and transparency are maximized. With a clear focus on explainability, chapters often highlight real-world use cases where XAI techniques have been successfully implemented to improve decision-making processes.
From ethical considerations in AI development to practical tools for creating interpretable systems, this book provides readers with the tools necessary to navigate the increasingly complex field of Explainable AI. Its wide scope also includes discussions on cognitive reasoning, ensuring comprehensibility for non-expert end users, and assessing fairness and trustworthiness in emerging AI systems.
Key Takeaways
- Learn the foundational principles of Explainable Artificial Intelligence and how reasoning enhances interpretability in AI systems.
- Understand the state-of-the-art techniques for integrating logic, reasoning, and machine learning approaches to create explainable models.
- Explore real-world applications of Explainable AI in sectors such as healthcare, legal decision-making, financial systems, and more.
- Discover strategies for designing AI systems that prioritize ethical considerations, fairness, and trust while maintaining high performance.
- Gain practical knowledge from tutorial lectures delivered by leading experts in the field of reasoning and AI.
Famous Quotes from the Book
"Transparency and interpretability are not optional features in today's AI systems—they are fundamental requirements for building trust and ensuring ethical outcomes."
"Balancing the power of advanced machine learning with the clarity of symbolic reasoning is the cornerstone of creating truly explainable AI."
Why This Book Matters
In an era where AI systems are deeply integrated into critical areas such as healthcare, law, and finance, the need for explainability has never been greater. This book addresses one of the most pressing challenges in modern artificial intelligence: making complex AI systems understandable to humans. By providing the foundational knowledge and advanced techniques necessary to achieve this, "Reasoning Web: Explainable Artificial Intelligence" contributes significantly to both academic research and practical applications.
The book is not just about understanding AI; it also emphasizes the importance of ethics, fairness, and trustworthiness in AI development. As AI systems continue to evolve, the lessons and insights contained in this volume will remain relevant and valuable, equipping the next generation of researchers and professionals with the tools to create responsible and impactful AI technologies.
Whether you're a student of computer science, an AI enthusiast, or a seasoned researcher, the book offers profound insights into one of the most critical advancements of our time. Its emphasis on reasoning and interpretability ensures that the future of AI development aligns with human values and needs, fostering innovation that benefits all.
Free Direct Download
Get Free Access to Download this and other Thousands of Books (Join Now)