English

Improving Sparse Associative Memories by Escaping from Bogus Fixed Points

Neural and Evolutionary Computing 2013-08-29 v1 Information Theory math.IT

Abstract

The Gripon-Berrou neural network (GBNN) is a recently invented recurrent neural network embracing a LDPC-like sparse encoding setup which makes it extremely resilient to noise and errors. A natural use of GBNN is as an associative memory. There are two activation rules for the neuron dynamics, namely sum-of-sum and sum-of-max. The latter outperforms the former in terms of retrieval rate by a huge margin. In prior discussions and experiments, it is believed that although sum-of-sum may lead the network to oscillate, sum-of-max always converges to an ensemble of neuron cliques corresponding to previously stored patterns. However, this is not entirely correct. In fact, sum-of-max often converges to bogus fixed points where the ensemble only comprises a small subset of the converged state. By taking advantage of this overlooked fact, we can greatly improve the retrieval rate. We discuss this particular issue and propose a number of heuristics to push sum-of-max beyond these bogus fixed points. To tackle the problem directly and completely, a novel post-processing algorithm is also developed and customized to the structure of GBNN. Experimental results show that the new algorithm achieves a huge performance boost in terms of both retrieval rate and run-time, compared to the standard sum-of-max and all the other heuristics.

Keywords

Cite

@article{arxiv.1308.6003,
  title  = {Improving Sparse Associative Memories by Escaping from Bogus Fixed Points},
  author = {Zhe Yao and Vincent Gripon and Michael Rabbat},
  journal= {arXiv preprint arXiv:1308.6003},
  year   = {2013}
}

Comments

12 pages

R2 v1 2026-06-22T01:16:10.920Z