Enhancing Continuous Domain Adaptation with Multi-Path Transfer Curriculum
CoRR(2024)
摘要
Addressing the large distribution gap between training and testing data has
long been a challenge in machine learning, giving rise to fields such as
transfer learning and domain adaptation. Recently, Continuous Domain Adaptation
(CDA) has emerged as an effective technique, closing this gap by utilizing a
series of intermediate domains. This paper contributes a novel CDA method,
W-MPOT, which rigorously addresses the domain ordering and error accumulation
problems overlooked by previous studies. Specifically, we construct a transfer
curriculum over the source and intermediate domains based on Wasserstein
distance, motivated by theoretical analysis of CDA. Then we transfer the source
model to the target domain through multiple valid paths in the curriculum using
a modified version of continuous optimal transport. A bidirectional path
consistency constraint is introduced to mitigate the impact of accumulated
mapping errors during continuous transfer. We extensively evaluate W-MPOT on
multiple datasets, achieving up to 54.1% accuracy improvement on multi-session
Alzheimer MR image classification and 94.7% MSE reduction on battery capacity
estimation.
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