A Novel Transfer Metric Learning Approach Based on Multi-Group

C. Yi, Yonghui Xu, Bo Xu, Jingtang Zhong, Zhen Zhu, Pengshuai Yin, Huaqing Min
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引用次数: 3

Abstract

In recent years, transfer learning receives increasingly attention ranging from the communities of developmental robots, computer vision to artificial intelligence. In the research of transfer learning, knowledge should be transferred from the source domain to the target domain. The source domain is used to train a classifier while the target domain is for testing. Existing works consider the source domain as a whole, however, samples in the source domain might be extracted into different groups and the samples in the same group would have similar intrinsic attributes. In this work, we propose a novel transfer metric learning framework based on multi-group, called TMLMG. In TMLMG, based on each group both a Mahalanobis distance metric and a basic classifier are learned to make predictions. A weight matrix is used to describe the prediction capabilites of all the combinations of groups and Mahalanobis distance metrics. The weight matrix is initialized and optimized based on the labeled samples in the target domain. Experimental results on publicly available datasets of object recognition and handwriting recognition verify the effectiveness of our proposed TMLMG in knowledge transfer.
一种新的基于多群体的迁移度量学习方法
近年来,从发展机器人、计算机视觉到人工智能,迁移学习越来越受到关注。在迁移学习的研究中,知识要从源领域转移到目标领域。源域用于训练分类器,目标域用于测试。现有的研究将源域作为一个整体来考虑,但源域的样本可能会被提取到不同的组中,同一组中的样本具有相似的内在属性。在这项工作中,我们提出了一种新的基于多组的迁移度量学习框架,称为TMLMG。在TMLMG中,基于每个组学习马氏距离度量和基本分类器来进行预测。权重矩阵用于描述所有组合和马氏距离度量的预测能力。基于目标域的标记样本初始化和优化权重矩阵。在公开的物体识别和手写识别数据集上的实验结果验证了我们提出的TMLMG在知识转移方面的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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