Efficient supervised learning in networks with binary synapses
- *Institute for Scientific Interchange Foundation, Viale S. Severo 65, I-10133 Torino, Italy;
- †Politecnico di Torino, Corso Duca degli Abruzzi 24, I-10129 Torino, Italy;
- ‡Laboratory of Neurophysics and Physiology (Unité Mixte de Recherche 8119), Centre National de la Recherche Scientifique–Université René Descartes, Paris 5, 45 Rue des Saints Pères, 75270 Paris Cedex 06, France; and
- §International Centre for Theoretical Physics, Strada Costiera 11, I-34100 Trieste, Italy
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Edited by Roger A. Nicoll, University of California, San Francisco, CA, and approved May 15, 2007 (received for review January 12, 2007)
Abstract
Recent experimental studies indicate that synaptic changes induced by neuronal activity are discrete jumps between a small number of stable states. Learning in systems with discrete synapses is known to be a computationally hard problem. Here, we study a neurobiologically plausible on-line learning algorithm that derives from belief propagation algorithms. We show that it performs remarkably well in a model neuron with binary synapses, and a finite number of “hidden” states per synapse, that has to learn a random classification task. Such a system is able to learn a number of associations close to the theoretical limit in time that is sublinear in system size. This is to our knowledge the first on-line algorithm that is able to achieve efficiently a finite number of patterns learned per binary synapse. Furthermore, we show that performance is optimal for a finite number of hidden states that becomes very small for sparse coding. The algorithm is similar to the standard “perceptron” learning algorithm, with an additional rule for synaptic transitions that occur only if a currently presented pattern is “barely correct.” In this case, the synaptic changes are metaplastic only (change in hidden states and not in actual synaptic state), stabilizing the synapse in its current state. Finally, we show that a system with two visible states and K hidden states is much more robust to noise than a system with K visible states. We suggest that this rule is sufficiently simple to be easily implemented by neurobiological systems or in hardware.
Footnotes
- ¶To whom correspondence should be addressed. E-mail: zecchina{at}ictp.it
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Author contributions: C.B., A.B., N.B., and R.Z. designed research; C.B., A.B., N.B., and R.Z. performed research; C.B., A.B., N.B., and R.Z. contributed new reagents/analytic tools; C.B., A.B., N.B., and R.Z. analyzed data; and C.B., A.B., N.B., and R.Z. wrote the paper.
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The authors declare no conflict of interest.
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This article is a PNAS Direct Submission.
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This article contains supporting information online at www.pnas.org/cgi/content/full/0700324104/DC1.
- Abbreviations:
- BP,
- belief propagation;
- BPI,
- BP-inspired;
- CP,
- clipped perceptron;
- SBPI,
- stochastic BPI;
- SP,
- standard perceptron.
- © 2007 by The National Academy of Sciences of the USA





