Title
Neural-symbolic cognitive agents: architecture, theory and application
Abstract
In real-world applications, the effective integration of learning and reasoning in a cognitive agent model is a difficult task. However, such integration may lead to a better understanding, use and construction of more realistic multiagent models. Existing models are either oversimplified or require too much processing time, which is unsuitable for online learning and reasoning. In particular, higher-order concepts and cognitive abilities have many unknown temporal relations with the data, making it impossible to represent such relationships by hand. In this paper, we develop and apply a Neural-Symbolic Cognitive Agent (NSCA) model for online learning and reasoning that seeks to effectively represent, learn and reason in complex real-world applications.
Year
DOI
Venue
2014
10.5555/2615731.2616092
AAMAS
Keywords
Field
DocType
neural-symbolic cognitive agent,complex real-world application,better understanding,realistic multiagent model,cognitive agent model,online learning,effective integration,cognitive ability,difficult task,real-world application
Online learning,Architecture,Computer science,Psychology of reasoning,Artificial intelligence,Temporal logic,Cognition,Cognitive agent,Verbal reasoning,Machine learning
Conference
Citations 
PageRank 
References 
1
0.37
5
Authors
4
Name
Order
Citations
PageRank
Leo de Penning163.19
Artur S. D'avila Garcez243163.57
Luis C. Lamb3598.07
John-Jules C. Meyer4352.72