Knowledge Table Driven Ontology Enhancement
نویسندگان
چکیده
Providing the ability for Ontology Evolution is important for developing complete standard ontologies for Semantic Web. Our paper presents an algorithm that enhances a consistent ontology by incorporating new concepts and properties submitted by users, provided they are consistent with the existing ontology. We introduce a structure called knowledge table that captures essence of an ontology, against which the input submission is checked to effectively detemine if it can be admitted or not. Experiments show that, this algorithm is scalable and can handle large ontologies.
منابع مشابه
Aggregate Table-Driven Querying via Navigation Ontologies in Distributed Statistical Databases
In this paper we describe a query paradigm based on ontologies, aggregate table-driven querying and expansion of QBE. It has two novel features: visually specifying aggregate table queries and table layout in a single process, and providing users with an ontology guide in composing complex analysis tasks as queries. We present the role of the fundamental concept of ontology in the context of th...
متن کاملAn ontology-based similarity measurement for problem-based case reasoning
Traditional case-based reasoning uses a table/frame or scenario to represent a case. It assumed that similar input/event results in similar output/event state. However, similar cases may not have similar output/event states since problem solver may have different way to break down the problem. Thus, authors previously proposed problem-based case reasoning to overcome the limitation of the tradi...
متن کاملSpeech Enhancement Based on Data-Driven Residual Gain Estimation
In this letter, we propose a novel speech enhancement algorithm based on data-driven residual gain estimation. The entire system consists of two stages. At the first stage, a conventional speech enhancement algorithm enhances the input signal while estimating several signalto-noise ratio (SNR)-related parameters. The residual gain, which is estimated by a data-driven method, is applied to furth...
متن کاملSDD-matcher: a semantic-driven data matching framework
A generic semantic-driven data matching framework (SDD-Matcher) has been designed and developed for matching data objects across organizations. It contains matching algorithms at three different levels: string, lexical and graph. The level of graph is also called ontological or conceptual level. Those matching algorithms are the basic building blocks of an SDDMatcher matching strategy, each of ...
متن کاملManagement of dynamic knowledge
Purpose: This paper presents a framework for ontology evolution tailored to Digital Libraries, which makes use of two different sources for change detection and propagation, the usage of ontologies by users and the changes of available data. Approach: After presenting the logical architecture of the evolution framework, we first illustrate how to deal with usage-driven changes, that is changes ...
متن کامل