We present a novel instance-based approach to handle regression tasks in the context of supervised domain adaptation under an assumption of covariate shift. The approach developed in this paper is based on the assumption that the task on the target domain can be efficiently learned by adequately reweighting the source instances during training phase. We introduce a novel formulation of the optimization objective for domain adaptation which relies on a discrepancy distance characterizing the difference between domains according to a specific task and a class of hypotheses. To solve this problem, we develop an adversarial network algorithm which learns both the source weighting scheme and the task in one feed-forward gradient descent. We provide numerical evidence of the relevance of the method on public data sets for regression domain adaptation through reproducible experiments.
翻译:我们提出了一种基于实例的新办法,在假设共变式变化的情况下处理监督领域适应的回归任务。本文件所制定的办法基于的假设是,在培训阶段对源实例进行充分的重新加权,从而能够有效地了解目标领域的任务。我们提出了一种新颖的域适应优化目标的提法,它依赖于根据具体任务和一系列假设区分不同领域之间的差异。为了解决这个问题,我们开发了一种对抗性网络算法,既学习源加权制办法,又学习一个进取式梯度梯度梯度梯度梯度梯度梯度梯度梯度梯度梯度梯度梯度梯度。我们提供了数字证据,证明公共数据集中的方法对于通过可复制的实验进行回归领域适应的相关性。