GDO:Gradual Domain Osmosis
Zixi Wang, Yubo Huang

TL;DR
This paper introduces Gradual Domain Osmosis, a novel method for efficient knowledge transfer in domain adaptation that dynamically balances source and target domain learning, improving generalisation in various datasets.
Contribution
It presents a new optimization framework with a dynamic hyperparameter to progressively adapt models across domains, outperforming existing methods.
Findings
Outperforms baseline methods on multiple datasets.
Dynamic tuning of hyperparameter $\\lambda$ improves adaptation.
Enhances model robustness and generalisation in domain shifts.
Abstract
In this paper, we propose a new method called Gradual Domain Osmosis, which aims to solve the problem of smooth knowledge migration from source domain to target domain in Gradual Domain Adaptation (GDA). Traditional Gradual Domain Adaptation methods mitigate domain bias by introducing intermediate domains and self-training strategies, but often face the challenges of inefficient knowledge migration or missing data in intermediate domains. In this paper, we design an optimisation framework based on the hyperparameter by dynamically balancing the loss weights of the source and target domains, which enables the model to progressively adjust the strength of knowledge migration ( incrementing from 0 to 1) during the training process, thus achieving cross-domain generalisation more efficiently. Specifically, the method incorporates self-training to generate pseudo-labels…
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Taxonomy
TopicsOil and Gas Production Techniques · Water Systems and Optimization
