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首页> 外文期刊>IEEE Transactions on Fuzzy Systems >Transfer Representation Learning With TSK Fuzzy System
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Transfer Representation Learning With TSK Fuzzy System

机译:用TSK模糊系统转移表示学习

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Transfer learning can address the learning tasks of unlabeled data in the target domain by leveraging plenty of labeled data from a different but related source domain. A core issue in transfer learning is to learn a shared feature space where the distributions of the data from the two domains are matched. This learning process can be named as transfer representation learning (TRL). Feature transformation methods are crucial to ensure the success of TRL. The most commonly used feature transformation method in TRL is kernel-based nonlinear mapping to the high-dimensional space, followed by linear dimensionality reduction. But the kernel functions are lack of interpretability, and it is difficult to select kernel functions. To this end, this article proposes a more intuitive and interpretable method, called TRL with TSK-FS (TRL-TSK-FS), by combining TSK fuzzy system (TSK-FS) with transfer learning. Specifically, TRL-TSK-FS realizes TRL from two aspects. On one hand, the data in the source and target domains are transformed into the fuzzy feature space where the distribution distance of the data between the two domains is minimized. On the other hand, discriminant information and geometric properties of the data are preserved by linear discriminant analysis and principal component analysis. A further advantage is that nonlinear transformation is realized in the proposed method by constructing fuzzy mapping with the antecedent part of the TSK-FS instead of kernel functions, which are difficult to be selected. Extensive experiments are conducted on text and image datasets to demonstrate the superiority of the proposed method.
机译:传输学习可以通过利用来自不同但相关源域的大量标记数据来解决目标域中未标记数据的学习任务。转移学习中的核心问题是学习共享功能空间,其中匹配来自两个域的数据的分布。该学习过程可以命名为传输表示学习(TRL)。功能转换方法至关重要,以确保TRL的成功。 TRL中最常用的特征变换方法是基于内核的非线性映射到高维空间,其次是线性维度降低。但内核功能缺乏可解释性,并且很难选择内核函数。为此,本文通过将TSK模糊系统(TSK-FS)与转移学习组合,提出了一种更直观和可解释的方法,称为TRL,具有TSK-FS(TRL-TSK-FS)。具体地,TRL-TSK-FS从两个方面实现TRL。一方面,源极和目标域中的数据被转换为模糊特征空间,其中两个域之间的数据的分布距离最小化。另一方面,通过线性判别分析和主成分分析来保留数据的判别信息和几何特性。另一个优点是通过构造利用TSK-F的前一部分而不是内核函数来构造模糊映射,以所提出的方法实现非线性变换,而不是核心函数。在文本和图像数据集上进行广泛的实验,以证明所提出的方法的优越性。

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