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2022-11-28-rostami22a.md

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title abstract video layout series publisher issn id month tex_title firstpage lastpage page order cycles bibtex_author author date address container-title volume genre issued pdf extras
Increasing Model Generalizability for Unsupervised Visual Domain Adaptation
A dominant approach for addressing unsupervised domain adaptation is to map data points for the source and the target domains into an embedding space which is modeled as the output-space of a shared deep encoder. The encoder is trained to make the embedding space domain-agnostic to make a source-trained classifier generalizable on the target domain. A secondary mechanism to improve UDA performance further is to make the source domain distribution more compact to improve model generalizability. We demonstrate that increasing the interclass margins in the embedding space can help to develop a UDA algorithm with improved performance. We estimate the internally learned multi-modal distribution for the source domain, learned as a result of pretraining, and use it to increase the interclass class separation in the source domain to reduce the effect of domain shift. We demonstrate that using our approach leads to improved model generalizability on four standard benchmark UDA image classification datasets and compares favorably against exiting methods.
inproceedings
Proceedings of Machine Learning Research
PMLR
2640-3498
rostami22a
0
Increasing Model Generalizability for Unsupervised Visual Domain Adaptation
281
293
281-293
281
false
Rostami, Mohammad
given family
Mohammad
Rostami
2022-11-28
Proceedings of The 1st Conference on Lifelong Learning Agents
199
inproceedings
date-parts
2022
11
28