Posted By: NITRC ADMIN - Mar 25, 2012
Tool/Resource: Neuroinformatics - The Journal
 

Abstract  
The connection-set algebra (CSA) is a novel and general formalism for the description of connectivity in neuronal network models, from small-scale to large-scale structure. The algebra provides operators to form more complex sets of connections from simpler ones and also provides parameterization of such sets. CSA is expressive enough to describe a wide range of connection patterns, including multiple types of random and/or geometrically dependent connectivity, and can serve as a concise notation for network structure in scientific writing. CSA implementations allow for scalable and efficient representation of connectivity in parallel neuronal network simulators and could even allow for avoiding explicit representation of connections in computer memory. The expressiveness of CSA makes prototyping of network structure easy. A C+ + version of the algebra has been implemented and used in a large-scale neuronal network simulation (Djurfeldt et al., IBM J Res Dev 52(1/2):31–42, 2008b) and an implementation in Python has been publicly released.

  • Content Type Journal Article
  • Category Original Article
  • Pages 1-18
  • DOI 10.1007/s12021-012-9146-1
  • Authors
    • Mikael Djurfeldt, School of Computer Science and Communication, KTH, 10044 Stockholm, Sweden


Link to Original Article
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