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Unsupervised Domain Adaptation Using Exemplar-SVMs with Adaptation Regularization

机译:使用具有适应正规化的示例性-SVMS的无监督域适配

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摘要

Domain adaptation has recently attracted attention for visual recognition. It assumes that source and target domain data are drawn from the same feature space but different margin distributions and its motivation is to utilize the source domain instances to assist in training a robust classifier for target domain tasks. Previous studies always focus on reducing the distribution mismatch across domains. However, in many real-world applications, there also exist problems of sample selection bias among instances in a domain; this would reduce the generalization performance of learners. To address this issue, we propose a novel model named Domain Adaptation Exemplar Support Vector Machines (DAESVMs) based on exemplar support vector machines (exemplar-SVMs). Our approach aims to address the problems of sample selection bias and domain adaptation simultaneously. Comparing with usual domain adaptation problems, we go a step further in slacking the assumption of i.i.d. First, we formulate the DAESVMs training classifiers with reducing Maximum Mean Discrepancy (MMD) among domains by mapping data into a latent space and preserving properties of original data, and then, we integrate classifiers to make a prediction for target domain instances. Our experiments were conducted on Office and Caltech10 datasets and verify the effectiveness of the model we proposed.
机译:域适应最近引起了视觉识别的关注。它假设从相同的特征空间绘制源和目标域数据,但不同的边距分布及其动机是利用源域实例来帮助训练用于目标域任务的强大分类器。以前的研究始终专注于减少跨域的分布不匹配。然而,在许多现实世界应用中,域中的实例之间的样本选择偏差也存在问题;这将减少学习者的泛化表现。为了解决这个问题,我们提出了一种基于示例性支持向量机(示例性SVM)的名为域自适应示例性支持向量机(DAESVM)的新颖模型。我们的方法旨在同时解决样本选择偏差和域适应问题。与常规域适应问题相比,我们进一步困扰i.i.d的假设。首先,我们通过将数据映射到潜在空间并保存原始数据的潜在空间,然后,将DAESVMS培训分类器缩小域中的最大平均差异(MMD),然后,我们集成了分类器以对目标域实例进行预测。我们的实验是在办公室和CALTECH10数据集上进行的,并验证了我们提出的模型的有效性。

著录项

  • 来源
    《Complexity》 |2018年第2期|共13页
  • 作者单位

    Univ Chinese Acad Sci Sch Comp &

    Control Engn Beijing 100049 Peoples R China;

    Chinese Acad Sci Res Ctr Fictitious Econ &

    Data Sci Beijing 100190 Peoples R China;

    Univ Chinese Acad Sci Sch Math Sci Beijing 100049 Peoples R China;

    Univ Chinese Acad Sci Sch Math Sci Beijing 100049 Peoples R China;

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  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类 大系统理论;
  • 关键词

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