Computational Conflicts

Download Computational Conflicts PDF/ePub or read online books in Mobi eBooks. Click Download or Read Online button to get Computational Conflicts book now. This website allows unlimited access to, at the time of writing, more than 1.5 million titles, including hundreds of thousands of titles in various foreign languages.
Computational Conflicts

Author: Heinz J. Müller
language: en
Publisher: Springer Science & Business Media
Release Date: 2012-12-06
The aim of this book is to bring together approaches from different subfields of Artificial Intelligence as well as adjoint disciplines in order to characterize a "computational model" of conflicts. The different views on computational conflicts are motivated as follows: Conflicts can occur in organizations among human agents, as well as in computational systems such as knowledge-based systems, or multi-agent systems. They can appear during problem solving or during communication. Their nature or processing can also be specific for some tasks (such as concurrent engineering and design). They can be formalized and techniques can be offered for detecting, managing or avoiding them.
Computational Methods for Inverse Problems

Provides a basic understanding of both the underlying mathematics and the computational methods used to solve inverse problems.
Genetic AI Algorithms: Evolutionary Approaches for Solving Complex Computational Problems

Author: Rajesh Ojha Prof (Dr) Ajay Shriram Kushwaha
language: en
Publisher: DeepMisti Publication
Release Date: 2025-01-14
In an era where technology evolves at an unprecedented pace, the demand for efficient, adaptable, and innovative solutions to complex computational problems has never been greater. Traditional algorithms often struggle to tackle the complexity, non-linearity, and scale of challenges faced in various fields, ranging from artificial intelligence (AI) to data science, bioinformatics, and beyond. This is where the power of genetic algorithms (GAs) and other evolutionary computation techniques comes into play, offering a new paradigm for problem-solving inspired by the process of natural selection. Genetic AI Algorithms: Evolutionary Approaches for Solving Complex Computational Problems explores the fascinating intersection of evolutionary biology and computational intelligence. It delves into the principles, techniques, and applications of genetic algorithms (GAs), genetic programming (GP), and other evolutionary strategies to provide readers with a comprehensive understanding of how these methods can be used to address some of the most challenging problems in modern computing. Evolutionary algorithms draw inspiration from the mechanisms of natural evolution, such as selection, mutation, crossover, and inheritance. These methods excel at finding optimal or near-optimal solutions in vast, poorly understood, or highly complex problem spaces. By mimicking the evolutionary process, they can explore potential solutions in ways that are often more robust and flexible than traditional approaches. Whether it’s solving optimization problems, designing neural networks, evolving game strategies, or simulating biological systems, evolutionary algorithms provide a powerful framework for innovation. This book serves as both an introduction and a practical guide for those seeking to harness the power of genetic AI algorithms. It begins with foundational concepts and gradually builds up to more advanced topics, ensuring accessibility for newcomers while providing in-depth insights for experienced practitioners. Through a combination of theory, examples, and case studies, readers will learn how to apply evolutionary algorithms to real-world problems, gain insights into the latest research, and discover new frontiers in computational intelligence. By the end of this journey, readers will be equipped with the knowledge and tools necessary to implement genetic AI algorithms for solving a wide array of complex computational challenges. As you embark on this exploration, I encourage you to think creatively and embrace the potential of evolutionary approaches to drive progress in your work, whether in academia, industry, or any other domain where computational problems abound. In closing, it is my hope that this book inspires further inquiry and discovery in the exciting field of genetic AI algorithms, and that it provides a solid foundation for those seeking to unlock the full potential of evolutionary computation. Authors