Title :
A Neurobiologically Plausible Vector Symbolic Architecture
Author :
Padilla, Daniel E. ; McDonnell, Mark D.
Author_Institution :
Comput. & Theor. Neurosci. Lab., Univ. of South Australia, Mawson Lakes, SA, Australia
Abstract :
Vector Symbolic Architectures (VSA) are approaches to representing symbols and structured combinations of symbols as high-dimensional vectors. They have applications in machine learning and for understanding information processing in neurobiology. VSAs are typically described in an abstract mathematical form in terms of vectors and operations on vectors. In this work, we show that a machine learning approach known as hierarchical temporal memory, which is based on the anatomy and function of mammalian neocortex, is inherently capable of supporting important VSA functionality. This follows because the approach learns sequences of semantics-preserving sparse distributed representations.
Keywords :
information retrieval; learning (artificial intelligence); VSA; abstract mathematical form; hierarchical temporal memory approach; high-dimensional vectors; information processing; machine learning; mammalian neocortex; neurobiologically plausible vector symbolic architecture; semantics-preserving sparse distributed representations; Computer architecture; Indexes; Probes; Semantics; Sparse matrices; Training; Vectors; hierarchical temporal memory; natural language processing; semantic symbols; sparse distributed representations; vector symbolic architecture;
Conference_Titel :
Semantic Computing (ICSC), 2014 IEEE International Conference on
Conference_Location :
Newport Beach, CA
Print_ISBN :
978-1-4799-4002-8
DOI :
10.1109/ICSC.2014.40