neural networks research group
areas
demos
people
projects
publications
software
INSOMNet Demo and package
INSOMNet is a subysmbolic sentence processing system that produces explicit and graded semantic graph representations. The novel technique of semantic self-organization allows the network to learn typical semantic dependencies between nodes in a graph that helps the INSOMNet process novel sentences. The technique makes it possible to assign case roles flexibly, while retaining the cogntively plausible behavior that characterizes connectionist modeling. INSOMNet has been shown to scale up to to sentences of realistic complexity, including those with dysfluencies in the input and damage in the network. The network also exhibits the crucial cognitive properties of incremental processing, expectations, semantic priming, and nonmonotonoic revision of an interpretation during sentence processing. INSOMNet therefore constitutes a significant step towards building a cogntive parser that works with everyday language that people use.
URL:
http://www.cs.utexas.edu/~martym/vmdemo/demo.html
People
Marshall R. Mayberry, III
Risto Miikkulainen
Publications
Incremental Nonmonotonic Parsing through SemanticSelf-Organization
(2003)
Incremental Nonmonotonic Parsing through Semantic Self-Organization
(2003)
Projects
SARDNET: Forming Maps of Sequences
Areas of Interest
Cognitive Science
Natural Language Processing
Self-Organization