The organization of systems that learn from experience is examined, human beings and animals being prime examples of such systems. How is their information processing organized. They build an internal model of the world and base their actions on the model. The model is dynamic and predictive, and it includes the systems' own actions and their effects. In modeling such systems, a large pattern of features represents a moment of the system's experience. Some of the features are provided by the system's senses, some control the system's motors, and the rest have no immediate external significance. A sequence of such patterns then represents the system's experience over time. By storing such sequences appropriately in memory, the system builds ...
Based on indications from neuroscience and psychology, both perception and action can be internally ...
This paper focuses on exploring how learning and development can be structured in synthetic (robot) ...
Science serie. The original publication is available on Springer’s website at www.springerlink.com. ...
How do we create machines with the ability to capture, record and recall memories of past experienc...
Robots can learn new skills by autonomously acquiring internal models that can be used for action pl...
Building robots that are able to efficiently operate in the real world is a formidable challenge. Fu...
Artificial intelligence and learning is a growing field. There are many ways of making a computer pr...
This dissertation investigates two complementary ideas in the literature on machine learning and rob...
Schilling M. Decentralization and Hierarchical Organization for Control of Adaptive and Cognitive Be...
This dissertation investigates two complementary ideas in the literature on machine learning and rob...
International audienceRecently, Machine Learning has achieved impressive results, surpassing human p...
Internal Models (IMs) play a significant role in autonomous robotics. They are mechanisms able to r...
In this paper 1 , the processes of exploration and of incremental learning in the robot navigatio...
Models are among the most essential tools in robotics, such as kinematics and dynamics models of the...
Abstract. In this paper we argue that a philosophically and psychologically grounded autonomous agen...
Based on indications from neuroscience and psychology, both perception and action can be internally ...
This paper focuses on exploring how learning and development can be structured in synthetic (robot) ...
Science serie. The original publication is available on Springer’s website at www.springerlink.com. ...
How do we create machines with the ability to capture, record and recall memories of past experienc...
Robots can learn new skills by autonomously acquiring internal models that can be used for action pl...
Building robots that are able to efficiently operate in the real world is a formidable challenge. Fu...
Artificial intelligence and learning is a growing field. There are many ways of making a computer pr...
This dissertation investigates two complementary ideas in the literature on machine learning and rob...
Schilling M. Decentralization and Hierarchical Organization for Control of Adaptive and Cognitive Be...
This dissertation investigates two complementary ideas in the literature on machine learning and rob...
International audienceRecently, Machine Learning has achieved impressive results, surpassing human p...
Internal Models (IMs) play a significant role in autonomous robotics. They are mechanisms able to r...
In this paper 1 , the processes of exploration and of incremental learning in the robot navigatio...
Models are among the most essential tools in robotics, such as kinematics and dynamics models of the...
Abstract. In this paper we argue that a philosophically and psychologically grounded autonomous agen...
Based on indications from neuroscience and psychology, both perception and action can be internally ...
This paper focuses on exploring how learning and development can be structured in synthetic (robot) ...
Science serie. The original publication is available on Springer’s website at www.springerlink.com. ...