An Hybrid Architecture Integrating Forward Rules with Fuzzy Ontological Reasoning
نویسندگان
چکیده
In recent years there has been a growing interest in the combination of rules and ontologies. Notably, many works have focused on the theoretical aspects of such integration, sometimes leading to concrete solutions. However, solutions proposed so far typically reason upon crisp concepts, while concrete domains require also fuzzy expressiveness. In this work we combine mature technologies, namely the Drools business rule management system, the Pellet OWL Reasoner and the FuzzyDL system, to provide a unified framework for supporting fuzzy reasoning. After extending the Drools framework (language and engine) to support uncertainty reasoning upon rules, we have integrated it with custom operators that (i) exploit Pellet to perform ontological reasoning, and (ii) exploit FuzzyDL to support fuzzy ontological reasoning. As a case study, we consider a decision-support system for the tourism domain, where ontologies are used to formally describe package tours, and rules are exploited to evaluate the consistency of such packages. Topics: Fuzzy Reasoning, Rule-based Reasoning, Rules Integration with Ontologies, Decision Support Systems, eTourism.
منابع مشابه
An Architecture of the Toolkit for Development of Hybrid Expert Systems
Architecture of the toolkit ESWin and hybrid expert systems, supported by one, are described in this report. The knowledge representation by rules, frames and linguistic variables is used in this architecture. The possibility of keeping and extraction of data from external databases, execute of external programs are provided. This architecture supports of forward and backward fuzzy inference, r...
متن کاملEfficient Query Answering over Fuzzy EL-OWL Based on Crisp Datalog Rewritable Fuzzy EL++
OWL EL is an extension of the tractable EL description logic. Despite their inference capabilities over TBoxes, DL reasoners have a high ABox reasoning complexity which may constitute a serious limitation in the Semantic Web where we rely mainly on query answering (i.e. instance checking). The subsomption algorithm used in fuzzy EL reduce instance checking into concept satisfiability. To allow ...
متن کاملLearning fuzzy rules and approximate reasoning in fuzzy neural networks and hybrid systems
The paper considers both knowledge acquisition and knowledge interpretation tasks as tightly connected and continuously interacting processes in a contemporary knowledge engineering system. Fuzzy rules are used here as a framework for knowledge representation. An algorithm REFuNN for fuzzy rules extraction from adaptive fuzzy neural networks (FuNN) is proposed. A case study of Iris classificati...
متن کاملType-2 Fuzzy Hybrid Expert System For Diagnosis Of Degenerative Disc Diseases
One-third of the people with an age over twenty have some signs of degenerated discs. However, in most of the patients the mere presence of degenerative discs is not a problem leading to pain, neurological compression, or other symptoms. This paper presents an interval type-2 fuzzy hybrid rule-based system to diagnose the abnormal degenerated discs where pain variables are represented by interv...
متن کاملRule-based Query Answering Method for a Knowledge Base of Economic Crimes
We present a description of the PhD thesis which aims to propose a rule-based query answering method for relational data. In this approach we use an additional knowledge which is represented as a set of rules and describes the source data at concept (ontological) level. Queries are posed in the terms of abstract level. We present two methods. The first one uses hybrid reasoning and the second o...
متن کامل