Title of article
Fast heterosynaptic learning in a robot food retrieval task inspired by the limbic system
Author/Authors
Bernd Porr، نويسنده , , Florentin W?rg?tter، نويسنده ,
Issue Information
روزنامه با شماره پیاپی سال 2007
Pages
6
From page
294
To page
299
Abstract
Hebbian learning is the most prominent paradigm in correlation based learning: if pre- and postsynaptic activity coincides the weight of the synapse is strengthened. Hebbian learning however, is not stable because of an autocorrelation term which causes the weights to grow exponentially. The standard solution would be to compensate the autocorrelation term. However, in this work we present a heterosynaptic learning rule which does not have an autocorrelation term and therefore does not show the instability of Hebbian learning. Consequently our heterosynaptic learning is much more stable than the classical Hebbian learning. The performance of our learning rule is demonstrated in a model which is inspired by the limbic system where an agent has to retrieve food.
Keywords
Hebbian learning , Limbic system , Robotics , closed loop , Heterosynaptic learning
Journal title
BioSystems
Serial Year
2007
Journal title
BioSystems
Record number
497859
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