An introduction to universal artificial intelligence / Marcus Hutter, David Quarel, Elliot Catt.
- 作者: Hutter, Marcus author
- 其他作者:
- 其他題名:
- Chapman & Hall/CRC artificial intelligence and robotics series
- Chapman and Hall/CRC artificial intelligence and robotics series
- Artificial intelligence and robotics series
- 出版: Boca Raton : Chapman & Hall, CRC Press 2024.
- 叢書名: Chapman & Hall/CRC Artificial Intelligence and robotics series
- 主題: Artificial intelligence. , Bayesian statistical decision theory. , Probabilities. , Algorithms. , Artificial intelligence. , Bayesian statistical decision theory. , Probabilities. , Algorithms.
- 版本:First edition.
- ISBN: 9781032607153 (hardcover) 、 1032607157 (hardcover) 、 9781032607023 (paperback): NT$2054 、 1032607025 (paperback)
- 書目註:Includes bibliographical references and index.
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讀者標籤:
- 系統號: 005718099 | 機讀編目格式
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The book provides a gentle introduction to Universal Artificial Intelligence (UAI), a theory that provides a formal underpinning of what it means for an agent to act intelligently in a general class of environments.
摘要註
"An Introduction to Universal Artificial Intelligence provides a gentle introduction to Universal Artificial Intelligence (UAI), a theory that provides a formal underpinning of what it means for an agent to act intelligently in a general class of environments. First presented in Universal Artificial Intelligence (Hutter, 2004), UAI presents a model in which most other problems in AI can be presented, and unifies ideas from sequential decision theory, Bayesian inference and information theory to construct AIXI, an optimal reinforcement learning agent that learns to act optimally in unknown environments. AIXI represents a theoretical bound on intelligent behaviour, and so we also discuss tractable approximations of this optimal agent. The book covers important practical approaches including efficient Bayesian updating with context tree weighting, and stochastic planning, approximated by sampling with Monte Carlo tree search. Algorithms are also included for the reader to implement, along with experimental results to compare against. This serves to approximate AIXI, as well as being used in state-of-the-art approaches in AI today. The book ends with a philosophical discussion of AGI covering the following key questions: Should intelligent agents be constructed at all, is it inevitable that they will be constructed, and is it dangerous to do so? This text is suitable for late undergraduates and includes an extensive background chapter to fill in the assumed mathematical background"--