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Multi-Source Domain Adaptation with Fuzzy-Rule based Deep Neural Networks

机译:基于模糊规则的深神经网络的多源域适应

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Unsupervised domain adaptation provides a variety of methods to leverage the previously gained knowledge from a labeled source domain to help complete a task from a similar unlabeled target domain. Many existing methods focus on transferring knowledge across single source and single target domains, while few studies deal with multi-source domain adaptation, which is more realistic and challengeable. Existing multi-source domain adaptation methods rarely consider the uncertainty of the transformed knowledge resulting from limited information in target domain. A fuzzy system allows imprecision and ambiguity within transfer, thus it can deal with problems with uncertainty. This work proposes a multi-source domain adaptation method with fuzzy-rule based deep neural networks (MDAFuz). The proposed method first extracts multi-view adapted features and pre-trains source classifiers. Using the learned features and classifiers, training samples are then split into multiple clusters, hence fuzzy rules can be built to learn new classifiers. At the same time, the cluster discriminator is trained to define the membership. Finally, by measuring the similarities among source and target domains using the pseudo target labels and a domain discriminator, the target task is completed by combining all source classifiers with regard to the learned weights. The experiment results on real-world visual datasets show the superiority of the proposed method.
机译:无监督的域适应提供了各种方法,可以从标记的源域中利用先前获得的知识,以帮助完成来自类似未标记的目标域的任务。许多现有方法专注于在单一来源和单个目标域之间传输知识,而几个研究处理多源域适应,这是更加现实和挑战的。现有的多源域适配方法很少考虑由目标域中的有限信息产生的变换知识的不确定性。模糊系统允许转移中的不精确和歧义,因此它可以处理不确定性的问题。这项工作提出了一种具有模糊规则的深神经网络(MDAFUZ)的多源域自适应方法。所提出的方法首先提取多视图适配的特征和预先列车源分类器。使用学习的功能和分类器,然后将训练样本分成多个集群,因此可以构建模糊规则以学习新的分类器。与此同时,群集鉴别器培训以定义成员资格。最后,通过使用伪目标标签和域鉴别器测量源极和目标域之间的相似性,通过组合关于学习权重的所有源分类器来完成目标任务。实验结果在现实世界的视觉数据集上显示了所提出的方法的优越性。

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