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Approximation of Fuzzy Sets by Interval Type-2 Trapezoidal Fuzzy Sets

机译:间隔类型2梯形模糊集模糊组的近似

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摘要

In this paper, we propose a gradient-based method to approximate a fuzzy set through a trapezoidal fuzzy set (TFS). By adding some constraints in the formulated optimization problem, the major characteristics of the fuzzy set such as the core, the major part of the support, and the shape of the membership function could be preserved; also the form of the optimized result as a TFS is guaranteed. We regard the optimized TFS as the "skeleton" (blueprint) of the original fuzzy set. Based on this skeleton, we further extend the TFS to a higher type, that is, an interval type-2 TFS (IT2 TFS), so that more information about the original fuzzy set could be captured but the number of the parameters used to describe the original fuzzy set is still maintained low (nine parameters are required for an IT2 TFS). The principle of justifiable granularity is used to ensure that the formed type-2 information granule exhibits a sound interpretation. Both synthetic fuzzy sets and those constructed by the fuzzy C-means algorithm applied to the publicly available data have been used to demonstrate the usefulness of the proposed approximation methods.
机译:在本文中,我们提出了一种基于梯度的方法,以近似通过梯形模糊组(TFS)的模糊组。通过在配方化优化问题中添加一些约束,可以保留诸如核心,支撑的主要部分的模糊装置的主要特征,以及可以保留隶属函数的形状;还保证了作为TFS作为TFS的优化结果的形式。我们将优化的TFS视为原始模糊集的“骨架”(蓝图)。基于该骨架,我们进一步将TFS扩展到更高类型,即间隔类型-2 TFS(IT2 TFS),因此可以捕获有关原始模糊集的更多信息,但用于描述的参数的数量原始模糊集仍保持低位(IT2 TFS需要九个参数)。正常粒度原理用于确保形成的2型信息颗粒表现出声音解释。合成模糊集和由应用于公开数据的模糊C型算法构造的那些已经用于展示所提出的近似方法的有用性。

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