Sciweavers

ESANN
2008

Using graph-theoretic measures to predict the performance of associative memory models

14 years 28 days ago
Using graph-theoretic measures to predict the performance of associative memory models
We test a selection of associative memory models built with different connection strategies, exploring the relationship between the structural properties of each network and its pattern-completion performance. It is found that the Local Efficiency of the network can be used to predict pattern completion performance for associative memory models built with a range of different connection strategies. This relationship is maintained as the networks are scaled up in size, but breaks down under conditions of very sparse connectivity.
Lee Calcraft, Rod Adams, Weiliang Chen, Neil Davey
Added 29 Oct 2010
Updated 29 Oct 2010
Type Conference
Year 2008
Where ESANN
Authors Lee Calcraft, Rod Adams, Weiliang Chen, Neil Davey
Comments (0)