Publication | Open Access
Optimize TSK Fuzzy Systems for Classification Problems: Minibatch Gradient Descent With Uniform Regularization and Batch Normalization
109
Citations
41
References
2020
Year
Artificial IntelligenceFuzzy SystemsMachine LearningBatch NormalizationEngineeringUniform RegularizationData ScienceData MiningPattern RecognitionFuzzy OptimizationFuzzy Pattern RecognitionFuzzy LogicFuzzy ComputingMachine Learning ModelKnowledge DiscoveryData NormalizationIntelligent ClassificationComputer ScienceDeep LearningMinibatch Gradient DescentData ClassificationNeuro-fuzzy SystemClassifier System
Takagi-Sugeno-Kang (TSK) fuzzy systems are flexible and interpretable machine learning models; however, they may not be easily optimized when the data size is large, and/or the data dimensionality is high. This article proposes a minibatch gradient descent (MBGD) based algorithm to efficiently and effectively train TSK fuzzy classifiers. It integrates two novel techniques: First, uniform regularization (UR), which forces the rules to have similar average contributions to the output, and hence to increase the generalization performance of the TSK classifier; and, second, batch normalization (BN), which extends BN from deep neural networks to TSK fuzzy classifiers to expedite the convergence and improve the generalization performance. Experiments on 12 UCI datasets from various application domains, with varying size and dimensionality, demonstrated that UR and BN are effective individually, and integrating them can further improve the classification performance.
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