DOI QR코드

DOI QR Code

The method of using database technology to process rules of Rule-Based System

  • Zheng, Baowei (Department of Information Engineering, Pukyong National University) ;
  • Yeo, Jeong-Mo (Division of Electronics, Computer, and Telecommunication Engineering, Pukyong National University)
  • Received : 2009.11.12
  • Accepted : 2009.12.01
  • Published : 2010.02.28

Abstract

The most important of rule-base system is the knowledge base that determines the power of rule-base system. The important form of this knowledge is how to descript kinds of rules. The Rule-Base System (RBS) has been using in many field that need reflect quickly change of business rules in management system. As far, when develop the Rule-Based System, we must make a rule engine with a general language. There are three disadvantage of in this developed method. First, while there are many data that must be processed in the system, the speed of processing data will become very slow so that we cannot accept it. Second, we cannot change the current system to make it adaptive to changes of business rules as quickly as possible. Third, large data make the rule engine become very complex. Therefore, in this paper, we propose the two important methods of raising efficiency of Rule-Base System. The first method refers to using the Relational database technology to process the rules of the Rule-Base System, the second method refers to a algorithm of according to Quine McCluskey formula compress the rows of rule table. Because the expressive languages of rule are still remaining many problems, we will introduce a new expressive language, which is Rule-Base Data Model short as RBDM in this paper.

Keywords

References

  1. En-core consulting. Rule Base Data Model Seminar, 2008. www.en-core.com.
  2. Editor-in-chief and Prof. Janusz Kacprzyk, Logical Functions for Rule-Base Systems, second edition. Spinger. 2006.
  3. Ahmed T. Sadik, Premises Reduction of Rule Based Expert System Using Association Rules Technique. International Journal of Soft Computing 3(3): 195-200, 2008.
  4. Oracle Corp. Oracle $\circR$ Fusion Middleware User's Guide for Oracle Business Rules I1g Release 1 (11.1.1). 2009.
  5. Alison Cawsey. The architecture of forward chaining Rule-Base System and backward chaining Rule-Base System. Department of Computing and Electrical Engineering Heriot-Watt University Edinburgh EH14 4AS, UK. 2007.
  6. David C.Hay. Data Model Patterns A Metadata Map. Morgan Kaufmann Publishing, 2007.
  7. Len Silverston, Paul Agnew. The Data Model Resource Book. Wiley Publishing, Inc. 2009. pp. 411-468.
  8. Steve Hoberman & Associates, LLC. Data Modeling Master Class. 2008. pp. 112-280. www.stevehoberman.com
  9. Stephande Faroult & Peter Robson. The Art of SQL. Publishing House of electronics industry. 2008. pp.167-190.
  10. Lee Huw Sick. New Written, Large Scale Database Solution. Publishing En-core consulting. 2005. pp.1-99, 323-399.

Cited by

  1. 효율적인 연관규칙 감축을 위한 WT-알고리즘에 관한 연구 vol.20, pp.5, 2015, https://doi.org/10.9723/jksiis.2015.20.5.061