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A New Recurrent Neural Network Fuzzy Mean Square Clustering Method

Karim El Moutaouakil, Abdellah Touhafi

202022 citationsDOI

Abstract

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.

Topics & Concepts

Cluster analysisArtificial neural networkFuzzy logicComputer scienceFuzzy clusteringMean squared errorMathematical optimizationRecurrent neural networkMathematicsAlgorithmArtificial intelligenceStatisticsFace and Expression RecognitionNeural Networks and ApplicationsAdvanced Clustering Algorithms Research