LGCVMLJan 13, 2020

Incremental Unsupervised Domain-Adversarial Training of Neural Networks

arXiv:2001.04129v142 citations
AI Analysis

This work addresses domain adaptation for deep learning models, which is crucial for applications where training and test data come from different distributions, but it is incremental as it builds upon existing unsupervised methods.

The paper tackles the problem of domain adaptation in deep neural networks by proposing an incremental approach that iteratively adapts the model to a new domain using an existing unsupervised algorithm to select high-confidence target samples, labeling them with the network's predictions and adding them to the training set, resulting in clear improvements over non-incremental methods and outperforming other state-of-the-art algorithms on several datasets.

In the context of supervised statistical learning, it is typically assumed that the training set comes from the same distribution that draws the test samples. When this is not the case, the behavior of the learned model is unpredictable and becomes dependent upon the degree of similarity between the distribution of the training set and the distribution of the test set. One of the research topics that investigates this scenario is referred to as domain adaptation. Deep neural networks brought dramatic advances in pattern recognition and that is why there have been many attempts to provide good domain adaptation algorithms for these models. Here we take a different avenue and approach the problem from an incremental point of view, where the model is adapted to the new domain iteratively. We make use of an existing unsupervised domain-adaptation algorithm to identify the target samples on which there is greater confidence about their true label. The output of the model is analyzed in different ways to determine the candidate samples. The selected set is then added to the source training set by considering the labels provided by the network as ground truth, and the process is repeated until all target samples are labelled. Our results report a clear improvement with respect to the non-incremental case in several datasets, also outperforming other state-of-the-art domain adaptation algorithms.

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