| Literature DB >> 25426060 |
Hafsteinn Einarsson1, Johannes Lengler1, Angelika Steger2.
Abstract
We present a high-capacity model for one-shot association learning (hetero-associative memory) in sparse networks. We assume that basic patterns are pre-learned in networks and associations between two patterns are presented only once and have to be learned immediately. The model is a combination of an Amit-Fusi like network sparsely connected to a Willshaw type network. The learning procedure is palimpsest and comes from earlier work on one-shot pattern learning. However, in our setup we can enhance the capacity of the network by iterative retrieval. This yields a model for sparse brain-like networks in which populations of a few thousand neurons are capable of learning hundreds of associations even if they are presented only once. The analysis of the model is based on a novel result by Janson et al. on bootstrap percolation in random graphs.Entities:
Keywords: bootstrap percolation; hetero-associative memory; iterative retrieval; memory capacity; one shot learning; relation learning; stochastic Hebbian learning
Year: 2014 PMID: 25426060 PMCID: PMC4224099 DOI: 10.3389/fncom.2014.00140
Source DB: PubMed Journal: Front Comput Neurosci ISSN: 1662-5188 Impact factor: 2.380