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引用次数: 7
摘要
子空间的学习和重建是近年来迁移学习研究的热点,通常需要一个专门设计的投影和重建迁移矩阵。然而,现有的基于子空间重构的算法忽略了类先验,使得学习到的传递函数存在偏倚,特别是当遇到某些类的数据稀缺性时。与以往的迁移学习方法不同,本文提出了一种新的基于重构的迁移学习方法,称为类特异性重构迁移学习(class -specific Reconstruction transfer learning, CRTL),该方法优化了一个设计良好的迁移损失函数,没有类偏差。使用特定于类的重构矩阵对源域和目标域进行对齐,为类先验建模的分类提供帮助。此外,为了保持特征增强后数据与标签之间的内在关系,首先在迁移学习中将数据从原始空间映射到RKHS,提出了一种测量两集之间依赖关系的投影Hilbert-Schmidt独立准则(projected Hilbert-Schmidt Independence Criterion, pHSIC)。此外,结合对类重构系数矩阵的低秩和稀疏约束,可以有效地保留全局和局部数据结构。大量的实验表明,该方法优于传统的基于表示的领域自适应方法。
Class-Specific Reconstruction Transfer Learning via Sparse Low-Rank Constraint
Subspace learning and reconstruction have been widely explored in recent transfer learning work and generally a specially designed projection and reconstruction transfer matrix are wanted. However, existing subspace reconstruction based algorithms neglect the class prior such that the learned transfer function is biased, especially when data scarcity of some class is encountered. Different from those previous methods, in this paper, we propose a novel reconstruction-based transfer learning method called Class-specific Reconstruction Transfer Learning (CRTL), which optimizes a well-designed transfer loss function without class bias. Using a class-specific reconstruction matrix to align the source domain with the target domain which provides help for classification with class prior modeling. Furthermore, to keep the intrinsic relationship between data and labels after feature augmentation, a projected Hilbert-Schmidt Independence Criterion (pHSIC), that measures the dependency between two sets, is first proposed by mapping the data from original space to RKHS in transfer learning. In addition, combining low-rank and sparse constraints on the class-specific reconstruction coefficient matrix, the global and local data structures can be effectively preserved. Extensive experiments demonstrate that the proposed method outperforms conventional representation-based domain adaptation methods.