基于描述逻辑的信息系统的概念学习

Thanh-Luong Tran, Quang-Thuy Ha, Thi-Lan-Giao Hoang, Linh Anh Nguyen, H. Nguyen, A. Szałas
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引用次数: 15

摘要

Nguyen和Szalas的工作[1]是在描述逻辑上下文中使用双模拟进行机器学习的先驱。本文对基于描述逻辑的信息系统的概念学习方法[1]进行了推广和扩展。我们把属性作为语言的基本元素。每个属性可以是离散的或数字的。布尔属性被视为概念名称。这种方法比[1]的方法更通用,更适合于基于描述逻辑的实际信息系统。作为进一步的扩展,我们还允许数据角色和概念构造器“功能”和“非量化数量限制”。我们给出并证明了关于基本选择器的一个重要定理。我们还提供了新的示例来说明我们的方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Concept Learning for Description Logic-Based Information Systems
The work [1] by Nguyen and Szalas is a pioneering one that uses bisimulation for machine learning in the context of description logics. In this paper we generalize and extend their concept learning method [1] for description logic-based information systems. We take attributes as basic elements of the language. Each attribute may be discrete or numeric. A Boolean attribute is treated as a concept name. This approach is more general and much more suitable for practical information systems based on description logic than the one of [1]. As further extensions we allow also data roles and the concept constructors "functionality" and "unquantified number restrictions". We formulate and prove an important theorem on basic selectors. We also provide new examples to illustrate our approach.
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