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Semi-Supervised Kernel Matching for Domain Adaptation

机译:半监督内核匹配以适应域

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摘要

In this paper, we propose a semi-supervised kernel matching method to address domain adaptation problems where the source distribution substantially differs from the target distribution. Specifically, we learn a prediction function on the labeled source data while mapping the target data points to similar source data points by matching the target kernel matrix to a submatrix of the source kernel matrix based on a Hilbert Schmidt Independence Criterion. We formulate this simultaneous learning and mapping process as a non-convex integer optimization problem and present a local minimization procedure for its relaxed continuous form. Our empirical results show the proposed kernel matching method significantly outperforms alternative methods on the task of across domain sentiment classification.
机译:在本文中,我们提出了一种半监督内核匹配方法,以解决源分配与目标分配明显不同的域自适应问题。具体来说,我们通过基于Hilbert Schmidt独立性准则将目标内核矩阵与源内核矩阵的子矩阵进行匹配,在将目标数据点映射到相似的源数据点的同时,学习了标记后的源数据的预测函数。我们将此同时学习和映射过程公式化为一个非凸整数优化问题,并为其松弛的连续形式提出了一个局部最小化过程。我们的经验结果表明,在跨领域情感分类的任务上,所提出的内核匹配方法明显优于替代方法。

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