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首页> 外文期刊>IEEE Transactions on Fuzzy Systems >A Novel Deep Fuzzy Classifier by Stacking Adversarial Interpretable TSK Fuzzy Sub-Classifiers With Smooth Gradient Information
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A Novel Deep Fuzzy Classifier by Stacking Adversarial Interpretable TSK Fuzzy Sub-Classifiers With Smooth Gradient Information

机译:具有平滑梯度信息的对抗性解释TSK模糊子分类器的新型深模糊分类器

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Different from our previous stacked-structure-based deep fuzzy classifier, in this paper, we explore the distinctive role of adversarial outputs of training samples in enhancing the classification performance of a stacked-structure-based deep fuzzy classifier. In order to achieve such goals, an adversarial Takagi-Sugeno-Kang (TSK) fuzzy classifier, which is denoted as TSKa, is proposed. With the TSKa, interpretable IF parts of first-order fuzzy rules can be generated by the random selection of fixed linguistic terms along each feature. According to our theoretical analysis, adversarial outputs of training samples enhance TSKa's generalization capability, thereby, resulting in the potential feasibility of leveraging their smooth gradient information with respect to the inputs in the training input space to construct a stacked-structure-based deep fuzzy classifier. In this paper, a novel deep fuzzy classifier is devised by stacking a series of TSKa sub-classifiers and training them by a deep learning strategy. An advantage of the proposed deep fuzzy classifier is its easy yet fast training. The training of each layer consists of two basic steps: computation of the smooth gradient information of adversarial outputs with respect to the inputs, and fast training of each corresponding TSKa by the least learning machine method. Comprehensive experiments on both benchmark datasets and an industrial case demonstrate the promising performance and advantages of the proposed deep fuzzy classifier.
机译:在本文中,我们以前的基于堆叠结构的深度模糊分类器不同,我们探讨了训练样本对普遍输出的独特作用,在提高了基于堆叠结构的深模糊分类器的分类性能方面。为了实现这样的目标,提出了一种由敌人的Takagi-sugeno-kang(tsk)模糊分类器,其表示为Tska。对于TSKA,可以解释一个首次模糊规则的部分可以通过沿着每个特征的随机选择固定语言术语来生成。根据我们的理论分析,训练样本的对抗输出增强了TSKA的泛化能力,从而导致利用它们相对于训练输入空间中的输入来利用它们的光滑梯度信息的潜在可行性来构建基于堆叠结构的深模糊模糊分类器。在本文中,通过堆叠一系列TSKA子分类器并通过深入学习策略培训它们来设计一种新型深模糊分类器。建议的深模糊分类器的一个优点是它很容易又快速训练。每个层的训练由两个基本步骤组成:通过最小学习机方法计算对输入的对抗输出的平滑梯度信息,以及通过最小的学习机方法对每个相应的TSKA的快速训练。基准数据集和工业案例的综合实验证明了建议深模糊分类器的有希望的性能和优势。

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