知识空间、属性依赖和分级知识状态

Eduard Bartl, R. Belohlávek
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引用次数: 4

摘要

本文讨论了在知识空间理论中发展起来的依赖关系。知识空间代表了知识评估的心理学方法的新范式。知识空间的一个显著特征是它们的非数字特征。本文的目的是双重的。首先,我们提出了一些关于知识空间中研究的数据依赖性的注释。其次,我们在一个比传统知识空间更一般的框架中考虑依赖关系。也就是说,我们放弃了知识状态是个体能够解决的一组问题的假设。相反,我们假设知识状态是问题的分级集(模糊集)。我们的假设考虑了个人可能部分解决特定问题的情况,而不仅仅是“能解决”或“不能解决”。我们提出了在具有分级知识状态的知识空间中依赖关系和依赖关系有效性的定义,提供了依赖关系的选择属性,并提供了一个引理,该引理可作为连接所谓的模糊属性隐含的现有结果的桥梁。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Knowledge Spaces, Attribute Dependencies, and Graded Knowledge States
The present paper deals with dependencies developed within the theory of knowledge spaces. Knowledge spaces represent a new paradigm in psychological approaches to assessment of knowledge. A distinguishing feature of knowledge spaces is their non-numerical character. The aim of the present paper is twofold. First, we bring up several remarks on data dependencies studied within knowledge spaces. Second, we consider the dependencies in a framework which is more general than that of classical knowledge spaces. Namely, we abandon the assumption that a knowledge state is a set of problems/questions which an individual is able to solve. Instead, we assume that a knowledge state is a graded set (fuzzy set) of problems. Our assumption accounts for situations where it is possible that an individual can solve a particular problem partially, rather than just "can solve" or "cannot solve". We propose a definition of dependencies and validity of dependencies in knowledge spaces with graded knowledge states, provide selected properties of the dependencies, and a lemma which serves as a bridge to existing results on so-called fuzzy attribute implications.
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