Unsupervised Domain Expansion from Multiple Sources
Jing Zhang, Wanqing Li, Lu sheng, Chang Tang, Philip Ogunbona

TL;DR
This paper introduces an unsupervised method for expanding a learned system to new domains using multiple source models and unlabelled data, effectively mitigating bias and preserving performance across domains.
Contribution
It proposes a novel approach for multi-source domain expansion that leverages source models and unlabelled data without needing access to original source data.
Findings
Effective in reducing domain bias
Maintains performance across multiple domains
Validated on VLCS, ImageCLEF_DA, PACS datasets
Abstract
Given an existing system learned from previous source domains, it is desirable to adapt the system to new domains without accessing and forgetting all the previous domains in some applications. This problem is known as domain expansion. Unlike traditional domain adaptation in which the target domain is the domain defined by new data, in domain expansion the target domain is formed jointly by the source domains and the new domain (hence, domain expansion) and the label function to be learned must work for the expanded domain. Specifically, this paper presents a method for unsupervised multi-source domain expansion (UMSDE) where only the pre-learned models of the source domains and unlabelled new domain data are available. We propose to use the predicted class probability of the unlabelled data in the new domain produced by different source models to jointly mitigate the biases among…
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Taxonomy
TopicsDomain Adaptation and Few-Shot Learning · COVID-19 diagnosis using AI · Machine Learning and ELM
