Vector Symbolic Architectures (VSA) combine a hypervector space and a set of operations on these vectors. Hypervectors provide powerful and noise-robust representations and VSAs are associated with promising theoretical properties for approaching high-level cognitive tasks. However, a major drawback of VSAs is the lack of opportunities to learn them from training data. Their power is merely an effect of good (and elaborate) design rather than learning. We exploit high-level knowledge about the structure of reactive robot problems to learn a VSA based on training data. We demonstrate preliminary results on a simple navigation task. Given a successful demonstration of a navigation run by pairs of sensor input and actuator output, the system l...
Machine learning can offer an increase in the flexibility and applicability of robotics at several l...
Autonomous mobile robots must accomplish tasks in unknown and noisy environments. In this context, l...
The navigation problem involves how to reach a goal avoiding obstacles in dynamic environments. This...
Vector Symbolic Architectures (VSA) combine a hypervector space and a set of operations on these vec...
In this contribution we want to draw the readers attention to the advantages of controller architect...
The present dissertation addresses problems related to robot learning from demonstra¬ tion. It pres...
In this licenciate thesis, we discuss how to generate actions from percepts within an autonomous rob...
Machine learning can offer an increase in the flexibility and applicability of robotics at several ...
This paper describes work in progress on a neural-based reinforcement learning architecture for the ...
This work proposes a connectionist architecture, DRAMA, for dynamic control and learning of autonomo...
In this paper, we confront the problem of applying reinforcement learning to agents that perceive th...
Abstract—This work proposes a general Reservoir Computing (RC) learning framework which can be used ...
Learning plays a vital role in the development of situated agents. In this paper, we explore the use...
We propose a novel framework for motion planning and control that is based on a manifold encoding o...
This paper focuses on the first step, describing a neural computing architecture which generates sym...
Machine learning can offer an increase in the flexibility and applicability of robotics at several l...
Autonomous mobile robots must accomplish tasks in unknown and noisy environments. In this context, l...
The navigation problem involves how to reach a goal avoiding obstacles in dynamic environments. This...
Vector Symbolic Architectures (VSA) combine a hypervector space and a set of operations on these vec...
In this contribution we want to draw the readers attention to the advantages of controller architect...
The present dissertation addresses problems related to robot learning from demonstra¬ tion. It pres...
In this licenciate thesis, we discuss how to generate actions from percepts within an autonomous rob...
Machine learning can offer an increase in the flexibility and applicability of robotics at several ...
This paper describes work in progress on a neural-based reinforcement learning architecture for the ...
This work proposes a connectionist architecture, DRAMA, for dynamic control and learning of autonomo...
In this paper, we confront the problem of applying reinforcement learning to agents that perceive th...
Abstract—This work proposes a general Reservoir Computing (RC) learning framework which can be used ...
Learning plays a vital role in the development of situated agents. In this paper, we explore the use...
We propose a novel framework for motion planning and control that is based on a manifold encoding o...
This paper focuses on the first step, describing a neural computing architecture which generates sym...
Machine learning can offer an increase in the flexibility and applicability of robotics at several l...
Autonomous mobile robots must accomplish tasks in unknown and noisy environments. In this context, l...
The navigation problem involves how to reach a goal avoiding obstacles in dynamic environments. This...