隶属函数的确定

Hongxing Li, C. L. P. Chen, Han-Pang Huang
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摘要

在我们的自然世界和日常生活中,我们经历着各种现象;从广义上讲,我们可以将其分为两类:确定性现象和不确定性现象。不确定现象的类别可以进一步细分为随机现象和模糊现象。因此,我们有三类现象及其相关的数学模型:确定性数学模型——这是一类模型,其中对象之间的关系是固定的或确定的。2. 随机(随机)数学模型——这是一类模型,其中对象之间的关系在本质上是不确定的或随机的。3.模糊数学模型——这是一类模型,其中对象和对象之间的关系是模糊的。随机现象和模糊现象的主要区别在于随机事件本身具有明确的定义,而模糊概念没有精确的延伸,因为很难判断一个对象是否属于该概念。我们可以说,随机性是因果律的缺陷,模糊性是中排律的缺陷。概率论将随机概念应用于因果关系的广义定律——概率定律。模糊集理论将模糊性质应用于广义的排除中间律——模糊隶属律。概率反映了事件在一定条件下的内在联系和相互作用。如果能从re-中得到一个稳定的频率,这可能是非常客观的
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Determination of Membership Functions
In our natural world and daily lives, we experience all kinds of phenomena; broadly speaking, we can divide them into two types: phenomena of certainty and phenomena of uncertainty. The class of uncertain phenomena can further be subdivided into random (stochastic) phenomena and fuzzy phenomena. Therefore, we have three categories of phenomena and their associated mathematical models: 1. Deterministic mathematical models-This is a class of models where the relationships between objects are fixed or known with certainty. 2. Random (stochastic) mathematical models-This is a class of models where the relationships between objects are uncertain or random in nature. 3. Fuzzy mathematical models-This is a class of models where objects and relationships between objects are fuzzy. The main distinction between random phenomena and fuzzy phenomena is that random events themselves have clear and well-defined meaning, whereas a fuzzy concept does not have a precise extension because it is hard to judge if an object belongs to the concept. We may say that randomness is a deficiency of the law of causality and that fuzziness is a deficiency of the law of the excluded middlc. Probability theory applies the random concept to generalized laws of causality-laws of probability. Fuzzy set theory applies the fuzzy property to the generalized law of the excluded middle-the law of membership from fuzziness. Probability reflects the internal relations and interactions of events under certain conditions. It could be very objective if a stable frequency is available from re-
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