Adaptation of a classifier to new domains is one of the challenging problems in machine learning. This has been addressed using many deep and non-deep learning based methods. Among the methodologies used, that of adversarial learning is widely applied to solve many deep learning problems along with domain adaptation. These methods are based on a discriminator that ensures source and target distributions are close. However, here we suggest that rather than using a point estimate obtaining by a single discriminator, it would be useful if a distribution based on ensembles of discriminators could be used to bridge this gap. This could be achieved using multiple classifiers or using traditional ensemble methods. In contrast, we suggest that a Monte Carlo dropout based ensemble discriminator could suffice to obtain the distribution based discriminator. Specifically, we propose a curriculum based dropout discriminator that gradually increases the variance of the sample based distribution and the corresponding reverse gradients are used to align the source and target feature representations. An ensemble of discriminators helps the model to learn the data distribution efficiently. It also provides a better gradient estimates to train the feature extractor. The detailed results and thorough ablation analysis show that our model outperforms state-of-the-art results.
翻译:使分类器适应新领域是机器学习的一个具有挑战性的问题。这个问题已经用许多深层次和非深层次的学习方法加以解决。在所使用的方法中,对抗性学习方法被广泛用于解决许多深层次的学习问题,同时对领域进行调整。这些方法基于一种歧视,确保源和目标分布接近。然而,我们在这里建议,使用单一歧视者获得的点估测,而不是使用一个单一歧视者获得的点估测,如果能够利用基于歧视者集合的分布来弥补这一差距,将会是有用的。这可以利用多种分类器或传统的混合方法来实现。相比之下,我们建议,基于蒙特卡洛辍学的混合式歧视器足以获得基于分布的区别器。具体地说,我们建议基于课程的辍学歧视器,逐渐增加基于样本分布的差异,并使用相应的反向梯度来调整源和目标特征表达方式。一组歧视者有助于使模型能够有效地学习数据分布。它还提供更好的梯度估计来训练特征提取器。详细的结果和彻底的模拟分析显示我们模型的外形结果。