Higher order vagueness and rough sets

H. Fu
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Abstract

It is well-known the naive approach to consider the main flaw to vague terms is that there are no sharp boundaries between positive and negative extensions, i.e., some borderline cases exist if the predicates are vague. However, Z. Pawlak has proposed a prominent approach to vagueness based on rough set theory but it seemed to be implausible due to the boundary region as the theory constructed must be precise (or “crisp”) but not vague in some sense. On the basis of Pawlak's creative idea and efforts, A. Skowron and R. Swiniarski proceeded to examine some further problems, one of them is the problem of higher order vagueness which is exactly to say that there is not only no sharp boundary between positive and negative extensions but also no sharp boundaries between positive extension and borderline cases or between borderline cases and negative extension, etc. And the main idea of the theory was within adaptive learning framework. Contrast to their approach, I aim to provide some supplied principles in this paper to show that the problem of higher order vagueness ipso facto can be assimilated by the revised rough set theory from a philosophical point of view.
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高阶模糊与粗糙集
众所周知,考虑模糊术语的主要缺陷的朴素方法是,在正扩展和负扩展之间没有明确的界限,即,如果谓词是模糊的,则存在一些边界情况。然而,Z. Pawlak在粗糙集理论的基础上提出了一种突出的模糊方法,但由于边界区域的原因,这种方法似乎不太可信,因为构建的理论必须是精确的(或“清晰的”),而不是在某种意义上模糊。在Pawlak的创造性思想和努力的基础上,A. Skowron和R. Swiniarski进一步探讨了一些问题,其中之一是高阶模糊问题,即不仅积极延伸与消极延伸之间没有明确的界限,而且积极延伸与边缘案例之间、边缘案例与消极延伸之间也没有明确的界限,等等。该理论的主要思想是在适应性学习框架内。与他们的方法相反,我的目的是在本文中提供一些提供的原则,以表明高阶模糊问题可以从哲学的角度被修正的粗糙集理论所吸收。
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