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Probabilistic Ontology Reference Architecture and Development Methodology.

机译:概率本体参考体系结构和开发方法。

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摘要

The use of ontologies is on the rise, as they facilitate interoperability and provide support for automation. Today, ontologies are popular for research in areas such as the Semantic Web, Knowledge Engineering, Artificial Intelligence and knowledge management. However, many real world problems in these disciplines are burdened by incomplete information and other sources of uncertainty which traditional ontologies cannot represent. Therefore, a means to incorporate uncertainty is a necessity. Probabilistic ontologies extend current ontology formalisms to provide support for representing and reasoning with uncertainty. Traditional ontologies provide a hierarchical structure of entity classes and a formal way of expressing their relationships with first-order expressivity, which supports logical reasoning. However, they lack built-in, principled support to adequately account for uncertainty. Applying simple probability annotations to ontologies fails to convey the structure of the probabilistic representation. Similarly, other less expressive probability schemes do not convey the ontology structure, and are also inadequate. Representation of uncertainty in real-world problems requires probabilistic ontologies, which integrate the inferential reasoning power of probabilistic representations with the first-order expressivity of ontologies. Developing a probabilistic ontology is more complex than simply assigning probability to a class instantiation or representing a probability scheme using ontology constructs. Standard ontological engineering methods provide insufficient support for the complexity of probabilistic ontology development. Therefore, a specific methodology is needed to develop probabilistic ontologies from conceptualization to implementation. This dissertation introduces a systematic approach to probabilistic ontology development facilitated through a reference architecture which focuses on evolving a traditional ontology from conceptualization to probabilistic ontology implementation for real-world problems. The Reference Architecture for Probabilistic Ontology Development captures, catalogues and defines the components necessary for probabilistic ontology development. It includes an efficient, teachable, and repeatable Probabilistic Ontology Development Methodology for the development, implementation and evaluation of explicit, logical and defensible probabilistic ontologies developed for knowledge-sharing and reuse in a given domain.
机译:本体的使用正在增加,因为它们促进了互操作性并为自动化提供了支持。如今,本体在语义网,知识工程,人工智能和知识管理等领域的研究中很受欢迎。但是,这些学科中的许多现实世界问题都由信息不完整和传统本体无法代表的其他不确定性来源所困扰。因此,有必要纳入不确定性的手段。概率本体论扩展了当前的本体论形式主义,为不确定性的表示和推理提供了支持。传统的本体提供了实体类的层次结构,并提供了一种形式形式的方式来表达它们与一阶表达的关系,这支持逻辑推理。但是,它们缺乏内置的原则支持来充分考虑不确定性。将简单的概率注释应用于本体无法传达概率表示的结构。类似地,其他表达较少的概率方案也无法传达本体结构,并且也不足够。现实问题中不确定性的表示需要概率本体,该本体将概率表示的推理能力与本体的一阶表达能力相结合。与简单地将概率分配给类实例或使用本体构造表示概率方案相比,开发概率本体要复杂得多。标准的本体工程方法无法为概率本体开发的复杂性提供足够的支持。因此,需要一种特定的方法来发展从概念化到实施的概率本体。本论文介绍了一种通过参考体系结构促进概率本体开发的系统方法,该体系结构侧重于将传统本体从概念化发展到针对现实世界问题的概率本体实现。概率本体开发参考体系结构捕获,分类并定义了概率本体开发所必需的组件。它包括一个有效,可教导和可重复的概率本体开发方法论,用于开发,实施和评估为给定领域中的知识共享和重用而开发的显式,逻辑和可辩护的概率本体论。

著录项

  • 作者

    Haberlin, Richard J. Jr.;

  • 作者单位

    George Mason University.;

  • 授予单位 George Mason University.;
  • 学科 Operations Research.;Artificial Intelligence.
  • 学位 Ph.D.
  • 年度 2013
  • 页码 386 p.
  • 总页数 386
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

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