4.6 Article

Transfer Independently Together: A Generalized Framework for Domain Adaptation

期刊

IEEE TRANSACTIONS ON CYBERNETICS
卷 49, 期 6, 页码 2144-2155

出版社

IEEE-INST ELECTRICAL ELECTRONICS ENGINEERS INC
DOI: 10.1109/TCYB.2018.2820174

关键词

Domain adaptation; landmark selection; subspace learning; transfer learning

资金

  1. National Natural Science Foundation of China [61371183]
  2. ARC [FT130101530, DP170103954]
  3. National Post-Doctoral Program for Innovative Talents [BX201700045]
  4. China Post-Doctoral Science Foundation [2017M623006]
  5. Applied Basic Research Program of Sichuan Province [2015JY0124]

向作者/读者索取更多资源

Currently, unsupervised heterogeneous domain adaptation in a generalized setting, which is the most common scenario in real-world applications, is under insufficient exploration. Existing approaches either are limited to special cases or require labeled target samples for training. This paper aims to overcome these limitations by proposing a generalized framework, named as transfer independently together (TIT). Specifically, we learn multiple transformations, one for each domain (independently), to map data onto a shared latent space, where the domains are well aligned. The multiple transformations are jointly optimized in a unified framework (together) by an effective formulation. In addition, to learn robust transformations, we further propose a novel landmark selection algorithm to reweight samples, i.e., increase the weight of pivot samples and decrease the weight of outliers. Our landmark selection is based on graph optimization. It focuses on sample geometric relationship rather than sample features. As a result, by abstracting feature vectors to graph vertices, only a simple and fast integer arithmetic is involved in our algorithm instead of matrix operations with float point arithmetic in existing approaches. At last, we effectively optimize our objective via a dimensionality reduction procedure. 'TIT is applicable to arbitrary sample dimensionality and does not need labeled target samples for training. Extensive evaluations on several standard benchmarks and large-scale datasets of image classification, text categorization and text-to-image recognition verify the superiority of our approach.

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