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The Hierarchical Accumulation of Knowledge in the Distributed Adaptive Control Architecture
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Title: The Hierarchical Accumulation of Knowledge in the Distributed Adaptive Control Architecture |
Authors: Marcos Sanmartin, Encarnación Ringwald, Milanka Duff, Armin Sánchez-Fibla, Martín Verschure, Paul F.M.J. |
Editor: Springer-Verlag |
Issue Date: 2013 |
URI: https://hdl.handle.net/11000/39215 |
Abstract:
Animals acquire knowledge as they interact with the world. Several
authors define this acquisition as a chain of transformations: data is acquired and
converted into information that is converted into knowledge. Moreover, theories on
cumulative learning suggest that different cognitive layers accumulate this knowledge,
building highly complex skills from low complexity ones. The biologically,
based Distributed Adaptive Control cognitive architecture (DAC) has been proposed
as a cumulative learning system. DAC contains different layers of control: reactive,
adaptive and contextual. This hierarchical organization allows for acquisition
of knowledge in a bottom-up interaction, i.e. sampled data is transformed into
knowledge. DAC has already been used as a framework to investigate fundamental
problems encountered in biology. Here we describe the DAC architecture and
present some studies focused on its highest cognitive layer where knowledge is
constructed and used. We investigate the roles of reactive and contextual control
depending on the characteristics and complexity of the tasks. We also show how
multi-sensor information could be integrated in order to acquire and use knowledge
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Type of document: info:eu-repo/semantics/bookPart |
Access rights: info:eu-repo/semantics/closedAccess Attribution-NonCommercial-NoDerivatives 4.0 Internacional |
DOI: 10.1007/978-3-642-39875-9 10 |
Published in: Computational and Robotic Models of the Hierarchical Organization of Behavior. Springer; 2013. p 213-234 |
Appears in Collections: Instituto de Neurociencias
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