Hideaki Takeda's Publication
- A. Ueno and H. Takeda: Cooperation of Categorical
and Behavioral Learning in a Practical Solution to the Abstraction Problem,
New Generation Computing, Vol. 19, pp. 257–282 (2001).
(Paper)
Real robots should be able to adapt autonomously tovarious
environments in order to go on executing their tasks without breaking down.
They achieve this by learning how to abstract only useful information from a
huge amount of information in the environment while executing their tasks.
This paper proposes a new architecture which performs categorical learning
and behavioral learning in parallel with task execution. We call the
architecture Situation Transition Network System (STNS). In categorical
learning, it makes a flexible state representation and modifies it according
to the results of behaviors. Behavioral learning is reinforcement learning on
the state representation. Simulation results have shown that this
architecture is able to learn efficiently and adapt to unexpected changes of
the environment autonomously.
Hideaki Takeda (National Institute of Informatics)