LGAIMLNov 15, 2018

On Deep Domain Adaptation: Some Theoretical Understandings

arXiv:1811.06199v36 citations
Originality Incremental advance
AI Analysis

This foundational work addresses a theoretical gap for researchers in domain adaptation, offering insights into why deep methods outperform shallow ones, though it is incremental in building on existing empirical studies.

The paper tackles the lack of theoretical understanding in deep domain adaptation by providing a rigorous framework that explains how closing the gap between source and target domains in a joint space minimizes transfer learning loss, generalizing previous empirical work.

Compared with shallow domain adaptation, recent progress in deep domain adaptation has shown that it can achieve higher predictive performance and stronger capacity to tackle structural data (e.g., image and sequential data). The underlying idea of deep domain adaptation is to bridge the gap between source and target domains in a joint space so that a supervised classifier trained on labeled source data can be nicely transferred to the target domain. This idea is certainly intuitive and powerful, however, limited theoretical understandings have been developed to support its underpinning principle. In this paper, we have provided a rigorous framework to explain why it is possible to close the gap of the target and source domains in the joint space. More specifically, we first study the loss incurred when performing transfer learning from the source to the target domain. This provides a theory that explains and generalizes existing work in deep domain adaptation which was mainly empirical. This enables us to further explain why closing the gap in the joint space can directly minimize the loss incurred for transfer learning between the two domains. To our knowledge, this offers the first theoretical result that characterizes a direct bound on the joint space and the gain of transfer learning via deep domain adaptation

Foundations

The foundational work for this paper's niche, ranked by how specifically the neighbourhood builds on it — not by global fame.

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