BriefGPT.xyz
Nov, 2023
逐步扩展源领域的无监督领域自适应
Gradual Source Domain Expansion for Unsupervised Domain Adaptation
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Thomas Westfechtel, Hao-Wei Yeh, Dexuan Zhang, Tatsuya Harada
TL;DR
通过渐进性的源领域扩展算法,将目标数据集作为伪源样本,从而通过多次重新初始化网络权重的训练,提取先前运行得出的知识,促进领域之间的对齐,改善无监督领域适应的准确性。
Abstract
unsupervised domain adaptation
(UDA) tries to overcome the need for a large labeled dataset by transferring knowledge from a
source dataset
, with lots of labeled data, to a
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