Title
Rule selection for knowledge-based product design
Abstract
Knowledge-intensive and collaborative environment becomes more significant in the modern product development. To realize a true knowledge-based product design environment, however, the complexity of design constraint is still cumbersome issue to tackle. Typically, product design information comes from various sources and rapidly changes; design is evolutionary. Thus, a minimal set of rules is required to make an appropriate design decision. This paper aims to present a rule reduct based approach to select systematically minimal set of rules. Rough set theory synthesizes approximation of concepts, analyzes data by discovering patterns, and classifies into certain decision classes, which can be extracted from data by means of methods based on Boolean reasoning and discernibility. In this paper, this rule reduct based approach is compared with the absorption theorem based approach.
Year
DOI
Venue
2010
10.1109/ICICIS.2010.5534773
Information Sciences and Interaction Sciences
Keywords
DocType
ISBN
rough set theory,design rule selection,knowledge-based product design,rule reduct,semantic product design,boolean functions,knowledge base,pattern analysis,data analysis,knowledge based systems,assembly,design rules,set theory,absorption,manufacturing,computational complexity,product design,collaboration,product development,ontologies
Conference
978-1-4244-7386-1
Citations 
PageRank 
References 
0
0.34
6
Authors
4
Name
Order
Citations
PageRank
Kyoung-Yun Kim121023.90
Keunho Choi215310.18
Jihoon Kim311.04
Ohbyung Kwon464246.14