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Vector fuzzy C-means

机译:矢量模糊C均值

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Many variants of fuzzy c-means (FCM) clustering method are applied to crisp numbers but only a few of them are extended to non-crisp numbers, mainly due to the fact that the latter needs complicated equations and exhausting calculations. Vector form of fuzzy c-means (VFCM), proposed in this paper, simplifies the FCM clustering method applying to non-crisp (symbolic interval and fuzzy) numbers. Indeed, the VFCM method is a simple and general form of FCM that applies the FCM clustering method to various types of numbers (crisp and non-crisp) with different correspondent metrics in a single structure, and without any complex calculations and exhaustive derivations. The VFCM maps the input (crisp or non-crisp) features to crisp ones and then applies the conventional FCM to the input numbers in the resulted crisp features' space. Finally, the resulted crisp prototypes in the mapped space would be influenced by inverse mapping to obtain the main prototypes' parameters in the input features' space. Equations of FCM applied to crisp, symbolic interval and fuzzy numbers (i.e., LR-type, trapezoidal-type, triangular-type and normal-type fuzzy numbers) are obtained in this paper, using the proposed VFCM method. Final resulted equations are the same as derived equations in [7, 9, 10, 13, 18, 19, 30, 38-40] (the FCM clustering method applying to non-crisp numbers directly and without using VFCM), while the VFCM obtains these equations using a single structure for all cases [7, 9, 10, 13, 18, 19, 30, 38-40] without any complex calculations. It is showed that VFCM is able to clustering of normal-type fuzzy numbers, too. Simulation results approve truly of normal-type fuzzy numbers clustering.
机译:模糊c均值(FCM)聚类方法的许多变体都适用于脆数,但只有少数扩展到非脆数,这主要是由于后者需要复杂的方程式和详尽的计算。本文提出的向量形式的模糊c均值(VFCM)简化了适用于非清晰(符号间隔和模糊)数的FCM聚类方法。实际上,VFCM方法是FCM的一种简单且通用的形式,该方法将FCM聚类方法应用于单一结构中具有不同对应度量的各种类型的数字(酥脆和非酥脆),而无需任何复杂的计算和详尽的推导。 VFCM将输入(酥脆或非酥脆)特征映射到清晰特征,然后将常规FCM应用于结果清晰特征空间中的输入编号。最后,逆映射会影响映射空间中生成的清晰原型,从而获得输入要素空间中的主要原型参数。本文利用提出的VFCM方法获得了适用于脆性,符号间隔和模糊数(即LR型,梯形,三角形和正型模糊数)的FCM方程。最终结果方程与[7、9、10、13、18、19、30、38-40]中的推导方程相同(FCM聚类方法直接适用于非酥数而不使用VFCM),而VFCM对于所有情况[7、9、10、13、18、19、30、38-40],使用单一结构即可获得这些方程式,而无需进行任何复杂的计算。结果表明,VFCM能够对常规类型的模糊数进行聚类。仿真结果真实地证明了标准类型的模糊数聚类。

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