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A New Recurrent Neural Network Fuzzy Mean Square Clustering Method

机译:一种新的经常性神经网络模糊均方聚类方法

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Fuzzy mean square clustering is one of the simplest and most performant versions of the k-means non-hierarchical clustering methods. In this work, we extend and improve this method by a recurrent neural network, leading to a new clustering method called Recurrent Neural Network Fuzzy Mean Square. In this approach the fuzzy mean square error is modeled by a constrained non-linear optimization program. The latter is solved by a recurrent neural network in which an original energy function is defined. The energy function makes a compromise between the objective function and the constraints by using appropriate Lagrange relaxation scales. The Euler-Cauchy method is then used to calculate the centers and the membership functions. Simulation results on academic datasets show the effectiveness of the proposed method.
机译:模糊均方群集是K-Means非分层聚类方法的最简单和最表情版本之一。在这项工作中,我们通过反复性神经网络扩展和改进了这种方法,导致新的聚类方法称为经常性神经网络模糊均线。在这种方法中,模糊均方误差由约束的非线性优化程序建模。后者通过复发性神经网络解决,其中定义了原始能量功能。能量函数通过使用适当的拉格朗日放松尺度来实现目标函数和约束之间的折衷。然后使用Euler-Cauchy方法来计算中心和隶属函数。学术数据集的仿真结果显示了该方法的有效性。

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