Deep neural networks demonstrated their ability to provide remarkable
performances on a wide range of supervised learning tasks (e.g., image
classification) when trained on extensive collections of labeled data (e.g.,
ImageNet). However, creating such large datasets requires a considerable amount
of resources, time, and effort. Such resources may not be available in many
practical cases, limiting the adoption and the application of many deep
learning methods. In a search for more data-efficient deep learning methods to
overcome the need for large annotated datasets, there is a rising research
interest in semi-supervised learning and its applications to deep neural
networks to reduce the amount of labeled data required, by either developing
novel methods or adopting existing semi-supervised learning frameworks for a
deep learning setting. In this paper, we provide a comprehensive overview of
deep semi-supervised learning, starting with an introduction to the field,
followed by a summarization of the dominant semi-supervised approaches in deep
learning.Comment: Preprin