Title :
Constraint logic programming and mixed integer programming
Author :
Lee, Ho Geun ; Lee, Ronald M. ; Yu, Gang
Author_Institution :
EURIDIS, Erasmus Univ. Rotterdam, Netherlands
Abstract :
Constraint logic programming (CLP), which combines the complementary strengths of the artificial intelligence (AI) and OR approaches, is introduced as a new tool for formalizing constraint satisfaction problems that include both qualitative and quantitative constraints. CLP(R), one CLP language, is used to contrast the CLP approach with mixed integer programming (MIP). Three relative advantages of CLP over MIP are analyzed: representational efficiency for domain-specific knowledge; partial solutions; and ease of model revision. A case example of constraint satisfaction problems is implemented by MIP and CLP(R) for comparison of the two approaches. The results exhibit the representational economics of CLP with computational efficiency comparable to that of MIP
Keywords :
constraint handling; integer programming; logic programming; OR; artificial intelligence; computational efficiency; constraint satisfaction problems; domain-specific knowledge; mixed integer programming; model revision; operations research; qualitative constraints; quantitative constraints; Artificial intelligence; Constraint theory; Inference algorithms; Information management; Investments; Linear programming; Logic programming; Marketing and sales; Quality management; Strategic planning;
Conference_Titel :
System Sciences, 1993, Proceeding of the Twenty-Sixth Hawaii International Conference on
Conference_Location :
Wailea, HI
Print_ISBN :
0-8186-3230-5
DOI :
10.1109/HICSS.1993.284354