Title :
Representation and processing of structures with binary sparse distributed codes
Author :
Rachkovskij, Dmitri A.
Author_Institution :
Glushkov (V.M.) Cybern. Center, Kiev, Ukraine
Abstract :
The schemes for compositional distributed representations include those allowing on-the-fly construction of fixed dimensionality codevectors to encode structures of various complexity. Similarity of such codevectors takes into account both structural and semantic similarity of represented structures. We provide a comparative description of sparse binary distributed representation developed in the framework of the associative-projective neural network architecture and the more well known holographic reduced representations of T.A. Plate (1995) and binary spatter codes of P. Kanerva (1996). The key procedure in associative-projective neural networks is context-dependent thinning which binds codevectors and maintains their sparseness. The codevectors are stored in structured memory array which can be realized as distributed auto-associative memory. Examples of distributed representation of structured data are given. Fast estimation of the similarity of analogical episodes by the overlap of their codevectors is used in the modeling of analogical reasoning both for retrieval of analogs from memory and for analogical mapping
Keywords :
associative processing; bibliographies; case-based reasoning; content-addressable storage; encoding; knowledge representation; neural nets; analogical episodes; analogical mapping; analogical reasoning; associative-projective neural network architecture; associative-projective neural networks; binary sparse distributed codes; binary spatter codes; comparative description; compositional distributed representations; context-dependent thinning; distributed auto-associative memory; fixed dimensionality codevectors; holographic reduced representations; on-the-fly construction; represented structures; semantic similarity; sparse binary distributed representation; structure processing; structured data; structured memory array; Artificial intelligence; Computational modeling; Cybernetics; Distributed computing; Helium; Holography; Humans; Neural networks; Neurons; Tensile stress;
Journal_Title :
Knowledge and Data Engineering, IEEE Transactions on