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A Spiking Neural Learning Classifier System (1201.3249v1)

Published 16 Jan 2012 in cs.NE, cs.LG, and cs.RO

Abstract: Learning Classifier Systems (LCS) are population-based reinforcement learners used in a wide variety of applications. This paper presents a LCS where each traditional rule is represented by a spiking neural network, a type of network with dynamic internal state. We employ a constructivist model of growth of both neurons and dendrites that realise flexible learning by evolving structures of sufficient complexity to solve a well-known problem involving continuous, real-valued inputs. Additionally, we extend the system to enable temporal state decomposition. By allowing our LCS to chain together sequences of heterogeneous actions into macro-actions, it is shown to perform optimally in a problem where traditional methods can fail to find a solution in a reasonable amount of time. Our final system is tested on a simulated robotics platform.

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Authors (3)
  1. Gerard Howard (2 papers)
  2. Larry Bull (61 papers)
  3. Pier-Luca Lanzi (2 papers)
Citations (2)

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