Domain Gap Embeddings for Generative Dataset Augmentation

The performance of deep learning models is intrinsically tied to the quality volume and relevance of their training data. Gathering ample data for production scenarios often demands significant time and resources. Among various strategies data augmentation circumvents exhaustive data collection by generating new data points from existing ones. However traditional augmentation techniques can be less effective amidst a shift in training and testing distributions. This paper explores the potential of synthetic data by leveraging large pre-trained models for data augmentation especially when confronted with distribution shifts. Although recent advancements in generative models have enabled several prior works in cross-distribution data generation they require model fine-tuning and a complex setup. To bypass these shortcomings we introduce Domain Gap Embeddings (DoGE) a plug-and-play semantic data augmentation framework in a cross-distribution few-shot setting. Our method extracts disparities between source and desired data distributions in a latent form and subsequently steers a generative process to supplement the training set with endless diverse synthetic samples. Our evaluations conducted on a subpopulation shift and three domain adaptation scenarios under a few-shot paradigm reveal that our versatile method improves performance across tasks without needing hands-on intervention or intricate fine-tuning. DoGE paves the way to effortlessly generate realistic controllable synthetic datasets following the test distributions bolstering real-world efficacy for downstream task models.

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