CS Graduate Seminar
September 26, 2003
Speaker: Nemecio Chavez (Chito)
Title: CONSMAG: Knowledge Representation Based Upon Consensus for Multiple Agents (by Dr. Don Dearholt)
Abstract:
A multi-agent system designed to observe and remember patterns of
co-occurrences in an open, dynamic system is described. The agents are
organized according to function, with the low-level agents storing
observed co-occurrences of key concepts or events in memory until being
recycled for further service, thus simulating fixed short-term memory.
The mid-level agents retain a short history (the length of this history
is determined by the number of low-level agents available) of
co-occurrence phenomena. The high-level executive agent computes three
different, related associative networks as a graphical representation of
the co-occurrences recorded by means of cumulative consensus of the
mid-level agents and responds to queries. Thus the CONSMAG system
effects a transformation from episodic memory to a class of associative
networks representative of semantic memory. This learning paradigm
supports cost estimates for learning any given associative network,
including modification of one network into another, to simulate a novice
becoming an expert.