Qualitative Spatial Abstraction in Reinforcement Learning Qualitative Spatial Abstraction in Reinforcement Learning

Qualitative Spatial Abstraction in Reinforcement Learning

    • £74.99
    • £74.99

Publisher Description

Reinforcement learning has developed as a successful learning approach for domains that are not fully understood and that are too complex to be described in closed form. However, reinforcement learning does not scale well to large and continuous problems. Furthermore, acquired knowledge specific to the learned task, and transfer of knowledge to new tasks is crucial.

In this book the author investigates whether deficiencies of reinforcement learning can be overcome by suitable abstraction methods. He discusses various forms of spatial abstraction, in particular qualitative abstraction, a form of representing knowledge that has been thoroughly investigated and successfully applied in spatial cognition research. With his approach, he exploits spatial structures and structural similarity to support the learning process by abstracting from less important features and stressing the essential ones. The author demonstrates his learning approach and the transferability of knowledge by having his system learn in a virtual robot simulation system and consequently transfer the acquired knowledge to a physical robot. The approach is influenced by findings from cognitive science.

The book is suitable for researchers working in artificial intelligence, in particular knowledge representation, learning, spatial cognition, and robotics.

GENRE
Computing & Internet
RELEASED
2010
13 December
LANGUAGE
EN
English
LENGTH
191
Pages
PUBLISHER
Springer Berlin Heidelberg
SIZE
3
MB

More Books Like This

KI 2009: Advances in Artificial Intelligence KI 2009: Advances in Artificial Intelligence
2009
Innovative Issues in Intelligent Systems Innovative Issues in Intelligent Systems
2010
Spatial Cognition V Spatial Cognition V
2007
KI 2008: Advances in Artificial Intelligence KI 2008: Advances in Artificial Intelligence
2008
Agents and Artificial Intelligence Agents and Artificial Intelligence
2010
Agents and Artificial Intelligence Agents and Artificial Intelligence
2014