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TY - GEN
ID - cogprints5281
UR - http://cogprints.org/5281/
A1 - Sprekeler, Henning
A1 - Michaelis, Christian
A1 - Wiskott, Laurenz
TI - Slowness: An Objective for Spike-Timing-Dependent Plasticity?
Y1 - 2006/12//
N2 - Slow Feature Analysis (SFA) is an efficient algorithm for
learning input-output functions that extract the most slowly varying features from a quickly varying signal. It
has been successfully applied to the unsupervised learning
of translation-, rotation-, and other invariances in a
model of the visual system, to the learning of complex cell
receptive fields, and, combined with a sparseness
objective, to the self-organized formation of place cells
in a model of the hippocampus.
In order to arrive at a biologically more plausible implementation of this learning rule, we consider analytically how SFA could be realized in simple linear continuous and spiking model neurons. It turns out that for the continuous model neuron SFA can be implemented by means of a modified version of standard Hebbian learning. In this framework we provide a connection to the trace learning rule for invariance learning. We then show that for Poisson neurons spike-timing-dependent plasticity (STDP) with a specific learning window can learn the same weight distribution as SFA. Surprisingly, we find that the appropriate learning rule reproduces the typical STDP learning window. The shape as well as the timescale are in good agreement with what has been measured experimentally. This offers a completely novel interpretation for the functional role of spike-timing-dependent plasticity in physiological neurons.
AV - public
KW - spike-timing dependent plasticity STDP slowness Slow Feature Analysis SFA invariance learning computational neuroscience modeling trace rule
ER -