INCORPORATING FUZZINESS INTO ACTIVE RULES

2008-10-01
Bostan-Korpeoglu, Burcin
Yazıcı, Adnan
Knowledge intensive applications require an intelligent environment, which can perform deductions in response to user queries or events that occur inside or outside of the applications. For that, we propose a fuzzy active object-oriented database for modeling knowledge intensive applications. In that, we incorporate fuzziness within the event, condition and action parts of an active rule. We consider deductive rules as special cases of active rules so that deductive queries are handled using abstract kind of events. We also introduce a model for fuzzy inferencing of fuzzy active rules where we develop a model for scenario concept. We use a Fuzzy Petri Net model for fuzzy rule-based inference.
INTERNATIONAL JOURNAL OF UNCERTAINTY FUZZINESS AND KNOWLEDGE-BASED SYSTEMS

Suggestions

An active fuzzy object-oriented database approach
Bostan-Korpeoglu, B; Yazıcı, Adnan (2004-07-29)
Knowledge intensive applications require an intelligent environment which can perform deductions due to user queries or events that occur inside or outside of the environment. In this study, we propose a fuzzy active object-oriented database for modelling knowledge intensive applications. Our approach integrates fuzzy, active and deductive rules with database objects, so that the system gains intelligent behaviour, which provides objects to perceive dynamic occurences and answer user queries. In this way, o...
A fuzzy Petri net model for intelligent databases
Bostan-Korpeoglu, Burcin; Yazıcı, Adnan (Elsevier BV, 2007-08-01)
Knowledge intensive applications require an intelligent environment, which can perform deductions in response to user queries or events that occur inside or outside of the applications. For that, we propose a fuzzy Petri net (FPN) model to represent knowledge and the behavior of an intelligent object-oriented database environment, which integrates fuzzy, active and deductive rules with database objects. The behavior of a system can be unpredictable due to the rules triggering or untriggering each other (non...
A fuzzy petri net model for intelligent databases
Bostan, Burçin; Yazıcı, Adnan; Department of Computer Engineering (2005)
Knowledge intensive applications require an intelligent environment, which can perform deductions in response to user queries or events that occur inside or outside of the applications. For that, we propose a Fuzzy Petri Net (FPN) model to represent the knowledge and the behavior in an intelligent object-oriented database environment, which integrates fuzzy, active and deductive rules with database objects. By gaining intelligent behaviour, the system maintains objects to perceive dynamic occurences and use...
Discovering fuzzy spatial association rules
Kacar, E; Cicekli, NK (2002-04-04)
Discovering interesting, implicit knowledge and general relationships in geographic information databases is very important to understand and use these spatial data. One of the methods for discovering this implicit knowledge is mining spatial association rules. A spatial association rule is a rule indicating certain association relationships among a set of spatial and possibly non-spatial predicates. In the mining process, data is organized in a hierarchical manner. However, in real-world applications it ma...
Using fuzzy Petri nets for static analysis of rule-bases
Bostan-Korpeoglu, B; Yazıcı, Adnan (2004-01-01)
We use a Fuzzy Petri Net (FPN) structure to represent knowledge and model the behavior in our intelligent object-oriented database environment, which integrates fuzzy, active and deductive rules with database objects. However, the behavior of a system can be unpredictable due to the rules triggering or untriggering each other (non-termination). Intermediate and final database states may also differ according to the order of rule executions (non-confluence). In order to foresee and solve problematic behavior...
Citation Formats
B. Bostan-Korpeoglu and A. Yazıcı, “INCORPORATING FUZZINESS INTO ACTIVE RULES,” INTERNATIONAL JOURNAL OF UNCERTAINTY FUZZINESS AND KNOWLEDGE-BASED SYSTEMS, pp. 735–757, 2008, Accessed: 00, 2020. [Online]. Available: https://hdl.handle.net/11511/32796.