Search Books
Fuzzy Rationality: A Critiq… Plant Cell and Tissue Cultu…

Motivated Reinforcement Learning: Curious Characters for Multiuser Games

Author Kathryn E. Merrick, Mary Lou Maher
Publisher Springer
Category Paperback
📄 Viewing lite version Full site ›
🌎 Shop on Amazon — choose country
99.00 USD
🛒 Buy New on Amazon 🇺🇸 🏷 Buy Used — $143.17

✓ Usually ships in 24 hours

Share:
Book Details
PublisherSpringer
ISBN / ASIN364210035X
ISBN-139783642100352
AvailabilityUsually ships in 24 hours
CategoryPaperback
MarketplaceUnited States 🇺🇸

Description

Motivated learning is an emerging research field in artificial intelligence and cognitive modelling. Computational models of motivation extend reinforcement learning to adaptive, multitask learning in complex, dynamic environments – the goal being to understand how machines can develop new skills and achieve goals that were not predefined by human engineers. In particular, this book describes how motivated reinforcement learning agents can be used in computer games for the design of non-player characters that can adapt their behaviour in response to unexpected changes in their environment. This book covers the design, application and evaluation of computational models of motivation in reinforcement learning. The authors start with overviews of motivation and reinforcement learning, then describe models for motivated reinforcement learning. The performance of these models is demonstrated by applications in simulated game scenarios and a live, open-ended virtual world. Researchers in artificial intelligence, machine learning and artificial life will benefit from this book, as will practitioners working on complex, dynamic systems – in particular multiuser, online games.
HANS-GUNTER HEUMANN : BEST OF PIANO CLASSICS 50 FAMOUS…
View
Please Try to Remember the First of Octember
View
The Bear Scouts
View
Pyramid
View
Love is Walking Hand in Hand
View
Dr. Karyn's Guide To The Teen Years
View
For Whom the Bell Tolls
View
Cricket World Cup Pocket Annual 1999
View
Rainbow Warrior
View