Karaoguz C, Rodemann T, Wrede B, Goerick C. Learning Information Acquisition for Multitasking Scenarios in Dynamic Environments. Ieee Transactions On Autonomous Mental Development. 2013;5(1):46-61.Real world environments are so dynamic and unpredictable that a goal-oriented autonomous system performing a set of tasks repeatedly never experiences the same situation even though the task routines are the same. Hence, manually designed solutions to execute such tasks are likely to fail due to such variations. Developmental approaches seek to solve this problem by implementing local learning mechanisms to the systems that can unfold capabilities to achieve a set of tasks through interactions with the environment. However, gathering all the infor...
The major goal of the COSPAL project is to develop an artificial cognitive system architecture, with...
Many techniques for speedup learning and knowledge compilation focus on the learning and optimizatio...
International audienceIn this work we contribute to development of a real-time intelligent system al...
Karaoguz C. Learning of information gathering in modular intelligent systems. Bielefeld: Universitae...
International audienceWithin this paper, a new kind of learning agents - so-called Constraint based ...
As research in artificial intelligence focuses on increasingly complex task domains, a key question ...
International audienceWe present an active learning architecture that allows a robot to actively lea...
The development of agents with bounded rationality is still an important challenge of artificial int...
Dynamic systems involve states that change both autonomously and as a consequence of the learner’s a...
© 2014 by EPFL Press. Biological cognitive systems have the great capability to recognize and interp...
Abstract. This chapter presents a generic internal reward system that drives an agent to increase th...
Agents, physical and virtual entities that interact with theirenvironment, are becoming increasingly...
This article describes a proposal to achieve fast robot learning from its interaction with the envir...
In recent years, artificial learning systems have demonstrated tremendous advances on a number of ch...
This paper proposes an adaptive modular reinforcement learning architecture and an algorithm for rob...
The major goal of the COSPAL project is to develop an artificial cognitive system architecture, with...
Many techniques for speedup learning and knowledge compilation focus on the learning and optimizatio...
International audienceIn this work we contribute to development of a real-time intelligent system al...
Karaoguz C. Learning of information gathering in modular intelligent systems. Bielefeld: Universitae...
International audienceWithin this paper, a new kind of learning agents - so-called Constraint based ...
As research in artificial intelligence focuses on increasingly complex task domains, a key question ...
International audienceWe present an active learning architecture that allows a robot to actively lea...
The development of agents with bounded rationality is still an important challenge of artificial int...
Dynamic systems involve states that change both autonomously and as a consequence of the learner’s a...
© 2014 by EPFL Press. Biological cognitive systems have the great capability to recognize and interp...
Abstract. This chapter presents a generic internal reward system that drives an agent to increase th...
Agents, physical and virtual entities that interact with theirenvironment, are becoming increasingly...
This article describes a proposal to achieve fast robot learning from its interaction with the envir...
In recent years, artificial learning systems have demonstrated tremendous advances on a number of ch...
This paper proposes an adaptive modular reinforcement learning architecture and an algorithm for rob...
The major goal of the COSPAL project is to develop an artificial cognitive system architecture, with...
Many techniques for speedup learning and knowledge compilation focus on the learning and optimizatio...
International audienceIn this work we contribute to development of a real-time intelligent system al...