BOOKS - Multi-Agent Reinforcement Learning Foundations and Modern Approaches
Multi-Agent Reinforcement Learning Foundations and Modern Approaches - Stefano V. Albrecht, Filippos Christianos, Lukas Sch?fer December 17, 2024 EPUB The MIT Press BOOKS
ECO~15 kg CO²

1 TON

Views
96038

Telegram
 
Multi-Agent Reinforcement Learning Foundations and Modern Approaches
Author: Stefano V. Albrecht, Filippos Christianos, Lukas Sch?fer
Year: December 17, 2024
Pages: 396
Format: EPUB
File size: 14.3 MB
Language: ENG



Pay with Telegram STARS
MultiAgent Reinforcement Learning Foundations and Modern Approaches The book "MultiAgent Reinforcement Learning Foundations and Modern Approaches" is a comprehensive guide to understanding the principles and applications of multi-agent reinforcement learning, a rapidly growing field that combines techniques from artificial intelligence, game theory, and control theory to solve complex problems in various domains. The book provides a thorough overview of the foundational concepts, algorithms, and applications of multi-agent reinforcement learning, making it an essential resource for researchers, students, and practitioners working in this area. The book begins by introducing the fundamental concepts of reinforcement learning and its extensions to multi-agent settings, where multiple agents interact with each other and learn to optimize their behaviors based on their observations and rewards. It covers the key challenges in multi-agent reinforcement learning, such as scalability, non-stationarity, and adversarial behavior, and discusses the different approaches to addressing these challenges. The book then delves into the foundational topics of multi-agent reinforcement learning, including the concept of a Nash equilibrium, the role of communication and cooperation, and the use of attention mechanisms to focus on relevant information. It also explores modern approaches to multi-agent reinforcement learning, such as deep reinforcement learning, off-policy learning, and transfer learning, and discusses their applications in areas like robotics, autonomous vehicles, and smart homes. One of the unique aspects of the book is its emphasis on the need to study and understand the process of technology evolution.
MultiAgent Reinforcement arning Foundations and Modern Approaches Книга «MultiAgent Reinforcement arning Foundations and Modern Approaches» - это всеобъемлющее руководство по пониманию принципов и приложений многоагентного обучения подкреплению, быстро развивающейся области, которая сочетает в себе методы искусственного интеллекта, теории игр и теории управления для решения сложных задач в различных областях. Книга содержит подробный обзор основополагающих концепций, алгоритмов и приложений многоагентного обучения с подкреплением, что делает его важным ресурсом для исследователей, студентов и практиков, работающих в этой области. Книга начинается с введения фундаментальных концепций обучения с подкреплением и его расширения до многоагентных настроек, где несколько агентов взаимодействуют друг с другом и учатся оптимизировать свое поведение на основе своих наблюдений и вознаграждений. Он охватывает ключевые проблемы многоагентного обучения с подкреплением, такие как масштабируемость, нестационарность и состязательное поведение, и обсуждает различные подходы к решению этих проблем. Затем книга углубляется в основополагающие темы многоагентного обучения с подкреплением, включая концепцию равновесия Нэша, роль общения и сотрудничества, а также использование механизмов внимания, чтобы сосредоточиться на соответствующей информации. В нем также рассматриваются современные подходы к многоагентному обучению с подкреплением, такие как глубокое обучение с подкреплением, обучение вне политики и обучение с передачей, а также обсуждаются их приложения в таких областях, как робототехника, автономные транспортные средства и умные дома. Один из уникальных аспектов книги - акцент на необходимости изучения и понимания процесса эволюции технологий.
''

You may also be interested in:

Emergence and Innovation in Digital Learning Foundations and Applications
Machine Learning for Healthcare Systems Foundations and Applications
Machine Learning with Python Foundations and Applications ML, Volume 1
Machine Learning Refined Foundations, Algorithms, and Applications
Handbook of Research on Machine Learning Foundations and Applications
Modern Vegetarian Instant Pot Cookbook 101 veggie and vegan recipes for your multi-cooker
Multi-Mode / Multi-Band RF Transceivers for Wireless Communications Advanced Techniques, Architectures, and Trends
The Metaphysical Foundations of Modern Science
Machine Learning Safety (Artificial Intelligence: Foundations, Theory, and Algorithms)
Machine Learning Refined Foundations, Algorithms and Applications. 2nd Edition
Deep Learning for Data Analytics Foundations, Biomedical Applications, and Challenges
A Brief Introduction to Machine Learning for Engineers (Foundations and Trends(r) in Signal Processing)
The New Pillars of Modern Teaching (Solutions for Modern Learning)
The Scientific Revolution and the Foundations of Modern Science
Introduction To Modern Physics Theoretical Foundations
Conceptual Foundations Of Modern Particle Physics
From Physics to Politics: The Metaphysical Foundations of Modern Philosophy
Sociology in Britain: A survey of research (Foundations of modern society)
Machine Learning The Ultimate Guide to Understand AI Big Data Analytics and the Machine Learning’s Building Block Application in Modern Life
Machiavelli, Islam and the East. Reorienting the Foundations of Modern Political Thought
Japan: The Intellectual Foundations of Modern Japanese Politics (Phoenix Book)
Foundations of Modern Networking SDN, NFV, QoE, IoT, and Cloud
Machiavelli, Islam and the East. Reorienting the Foundations of Modern Political Thought
Enhancing Smallholder Farmers| Access to Seed of Improved Legume Varieties Through Multi-stakeholder Platforms: Learning from the TLIII project Experiences in sub-Saharan Africa and South Asia
Unsupervised Domain Adaptation: Recent Advances and Future Perspectives (Machine Learning: Foundations, Methodologies, and Applications)
The Modern Web: Multi-Device Web Development with HTML5, CSS3, and JavaScript
Agents and Multi-agent Systems: Technologies and Applications 2023: Proceedings of 17th KES International Conference, KES-AMSTA 2023, June 2023 (Smart Innovation, Systems and Technologies, 354)
IoT Enabled Multi-Energy Systems: From Isolated Energy Grids to Modern Interconnected Networks
Hobbes|s Kingdom of Light: A Study of the Foundations of Modern Political Philosophy
God|s Philosophers: How the Medieval World Laid the Foundations of Modern Science
Machine Learning for Healthcare Systems: Foundations and Applications (River Publishers Series in Computing and Information Science and Technology)
Machine Learning The Ultimate Guide to Understand Artificial Intelligence and Big Data Analytics. Learn the Building Block Algorithms and the Machine Learning’s Application in the Modern Life
Hands-On Multi-Cloud Kubernetes: Multi-cluster kubernetes deployment and scaling with FluxCD, Virtual Kubelet, Submariner and KubeFed
Multi-Cloud Automation with Ansible: Automate, orchestrate, and scale in a multi-cloud world (English Edition)
Brain Training with the Buddha: A Modern Path to Insight Based on the Ancient Foundations of Mindfulness
Political Grammars: The Unconscious Foundations of Modern Democracy (Square One: First-Order Questions in the Humanities)
Multi-Cloud Automation with Ansible Automate, orchestrate, and scale in a multi-cloud world
Multi-Cloud Automation with Ansible Automate, orchestrate, and scale in a multi-cloud world
Momigliano and Antiquarianism: Foundations of the Modern Cultural Sciences (UCLA Clark Memorial Library Series)
Mastering Multi-Cloud Paradigm for Enterprises Transform Enterprise IT with Multi-Cloud Strategies Using Azure, AWS, and GCP for Optimizing Resources, Enhancing Security and Disaster Recovery