Heterogeneous domain adaptation: An unsupervised approach
Feng Liu, Guanquan Zhang, Jie Lu

TL;DR
This paper introduces an unsupervised method for heterogeneous domain adaptation that guarantees knowledge transfer correctness and measures domain similarity, achieving superior results across multiple applications.
Contribution
It presents a novel unsupervised transfer theorem, a principal angle-based domain distance metric, and the GLG model for effective heterogeneous unsupervised domain adaptation.
Findings
The GLG model outperforms existing baselines on five datasets.
The proposed metric effectively measures domain similarity.
The method is applicable to diverse fields like healthcare, finance, and text analysis.
Abstract
Domain adaptation leverages the knowledge in one domain - the source domain - to improve learning efficiency in another domain - the target domain. Existing heterogeneous domain adaptation research is relatively well-progressed, but only in situations where the target domain contains at least a few labeled instances. In contrast, heterogeneous domain adaptation with an unlabeled target domain has not been well-studied. To contribute to the research in this emerging field, this paper presents: (1) an unsupervised knowledge transfer theorem that guarantees the correctness of transferring knowledge; and (2) a principal angle-based metric to measure the distance between two pairs of domains: one pair comprises the original source and target domains and the other pair comprises two homogeneous representations of two domains. The theorem and the metric have been implemented in an innovative…
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