A comparison of two strategies for avoiding negative transfer in domain adaptation based on logistic regression

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Paul, A.; Vogt, K.; Rottensteiner, F.; Ostermann, J.; Heipke, C.: A comparison of two strategies for avoiding negative transfer in domain adaptation based on logistic regression. In: International Archives of the Photogrammetry, Remote Sensing and Spatial Information Sciences - ISPRS Archives 42 (2018), Nr. 2, S. 845-852. DOI: https://doi.org/10.5194/isprs-archives-XLII-2-845-2018

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To cite the version in the repository, please use this identifier: https://doi.org/10.15488/3752

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Sum total of downloads: 211




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In this paper we deal with the problem of measuring the similarity between training and tests datasets in the context of transfer learning (TL) for image classification. TL tries to transfer knowledge from a source domain, where labelled training samples are abundant but the data may follow a different distribution, to a target domain, where labelled training samples are scarce or even unavailable, assuming that the domains are related. Thus, the requirements w.r.t. the availability of labelled training samples in the target domain are reduced. In particular, if no labelled target data are available, it is inherently difficult to find a robust measure of relatedness between the source and target domains. This is of crucial importance for the performance of TL, because the knowledge transfer between unrelated data may lead to negative transfer, i.e. to a decrease of classification performance after transfer. We address the problem of measuring the relatedness between source and target datasets and investigate three different strategies to predict and, consequently, to avoid negative transfer in this paper. The first strategy is based on circular validation. The second strategy relies on the Maximum Mean Discrepancy (MMD) similarity metric, whereas the third one is an extension of MMD which incorporates the knowledge about the class labels in the source domain. Our method is evaluated using two different benchmark datasets. The experiments highlight the strengths and weaknesses of the investigated methods. We also show that it is possible to reduce the amount of negative transfer using these strategies for a TL method and to generate a consistent performance improvement over the whole dataset.
License of this version: CC BY 4.0 Unported
Document Type: Article
Publishing status: publishedVersion
Issue Date: 2018
Appears in Collections:Fakultät für Bauingenieurwesen und Geodäsie

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downloads by country:

pos. country downloads
total perc.
1 image of flag of Germany Germany 92 43.60%
2 image of flag of United States United States 40 18.96%
3 image of flag of Korea, Republic of Korea, Republic of 15 7.11%
4 image of flag of China China 14 6.64%
5 image of flag of Japan Japan 7 3.32%
6 image of flag of India India 7 3.32%
7 image of flag of Russian Federation Russian Federation 4 1.90%
8 image of flag of No geo information available No geo information available 3 1.42%
9 image of flag of Taiwan Taiwan 3 1.42%
10 image of flag of United Kingdom United Kingdom 3 1.42%
    other countries 23 10.90%

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