Communicating neural network knowledge between agents in a simulated aerial reconnaissance system
In order to maintain their performance in a dynamic environment,
agents may be required to modify their learning
behavior during run-time. If an agent utilizes a rule-based
system for learning, new rules may be easily communicated
to the agent in order to modify the way in which it learns.
However, if an agent utilizes a connectionist-based system
for learning, the way in which the agent learns typically
remains static. This is due, in part, to a lack of research
in communicating subsymbolic information between agents.
In this paper, we present a framework for communicating
neural network knowledge between agents in order to modify
an agent�s learning and pattern classification behavior.
This framework is applied to a simulated aerial reconnaissance
system in order to show how the communication of
neural network knowledge can help maintain the performance
of agents tasked with recognizing images of mobile
military objects.
Date: October 03, 1999
Book Title: Proceedings of the First International Symposium on Agent Systems and Applications,
Type: InProceedings
Downloads: 1074
Has 1 soft copy
size 152525 bytesBibtex
@InProceedings{Communicating_neural_network_knowledge_b,
author = "Stephen Quirolgico and Kip Canfield and Tim Finin",
title = "{Communicating neural network knowledge between agents in a simulated aerial reconnaissance system}",
month = "October",
year = "1999",
booktitle = "Proceedings of the First International Symposium on Agent Systems and Applications,",
}