面向深度无监督域适应的精准模型选择方法 / Towards Accurate Model Selection in Deep Unsupervised Domain Adaptation
1️⃣ 一句话总结
本文提出了一种名为深度嵌入验证(DEV)的新方法,通过将模型学到的特征表示直接嵌入验证过程,实现了对目标域风险的更准确、无偏估计,从而解决了深度无监督域适应领域中缺少可靠模型选择标准的核心难题。
Deep unsupervised domain adaptation (Deep UDA) methods successfully leverage rich labeled data in a source domain to boost the performance on related but unlabeled data in a target domain. However, algorithm comparison is cumbersome in Deep UDA due to the absence of accurate and standardized model selection method, posing an obstacle to further advances in the field. Existing model selection methods for Deep UDA are either highly biased, restricted, unstable, or even controversial (requiring labeled target data). To this end, we propose \textit{Deep Embedded Validation} (\textbf{DEV}), which embeds adapted feature representation into the validation procedure to obtain unbiased estimation of the target risk with bounded variance. The variance is further reduced by the technique of control variate. The efficacy of the method has been justified both theoretically and empirically.
面向深度无监督域适应的精准模型选择方法 / Towards Accurate Model Selection in Deep Unsupervised Domain Adaptation
本文提出了一种名为深度嵌入验证(DEV)的新方法,通过将模型学到的特征表示直接嵌入验证过程,实现了对目标域风险的更准确、无偏估计,从而解决了深度无监督域适应领域中缺少可靠模型选择标准的核心难题。
源自 arXiv: 2606.04665