概率Mamdani模糊系统的模糊加性推理方案

U. Kaymak, W. Bergh, J. V. D. Berg
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引用次数: 30

摘要

我们引入了一类具有广义mamdani型模糊规则库的概率模糊系统,以及一种使用插值方法聚合模糊事件的条件概率的加性推理方案。通过这种方法,可以计算任意脆输入向量的概率模糊输出。如果需要,可以使用去模糊化和平均步骤使概率模糊输出变得清晰。本文除了介绍了概率模糊系统的结构和相应的输入-输出映射的计算公式外,还总结了概率论和模糊集统计的一些重要结果。为了展示引入的概率模糊模型的工作原理,我们使用数据驱动的方法分析了一个模拟GARCH时间序列。概率模糊规则库是从给定的数据集派生出来的,其中包含对底层garch过程产生相当好的直观描述的规则。此外,我们还展示了一些额外的结果,如估计的回归平面和几个(非)条件概率分布。
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A fuzzy additive reasoning scheme for probabilistic Mamdani fuzzy systems
We introduce a type of probabilistic fuzzy system with a generalized Mamdani-type fuzzy rule base, and an additive reasoning scheme where conditional probabilities on fuzzy events are aggregated using an interpolation approach. In this way, probabilistic fuzzy outputs can be calculated for arbitrary crisp input vectors. If desired, the probabilistic fuzzy output can be made crisp using a defuzzification and averaging step. Besides introducing the architecture of the probabilistic fuzzy systems and the corresponding equations for calculating the input-output mapping, we summarize some key results from the probability theory and statistics on fuzzy sets. To show the working of the probabilistic fuzzy models introduced, we analyze a simulated GARCH time series using a data-driven approach. A probabilistic fuzzy rule-base is derived from the given data set containing rules that yield a rather good intuitive description of the underlying GARCH-process. Further, we show some additional results like the estimated regression plane and several (un)conditional probability distributions.
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