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SETrLUSI: Stochastic Ensemble Multi-Source Transfer Learning Using Statistical Invariant

19 September 2025
Chunna Li
Yiwei Song
Yuanhai Shao
    BDL
ArXiv (abs)PDFHTMLGithub
Main:9 Pages
5 Figures
Bibliography:3 Pages
7 Tables
Appendix:5 Pages
Abstract

In transfer learning, a source domain often carries diverse knowledge, and different domains usually emphasize different types of knowledge. Different from handling only a single type of knowledge from all domains in traditional transfer learning methods, we introduce an ensemble learning framework with a weak mode of convergence in the form of Statistical Invariant (SI) for multi-source transfer learning, formulated as Stochastic Ensemble Multi-Source Transfer Learning Using Statistical Invariant (SETrLUSI). The proposed SI extracts and integrates various types of knowledge from both source and target domains, which not only effectively utilizes diverse knowledge but also accelerates the convergence process. Further, SETrLUSI incorporates stochastic SI selection, proportional source domain sampling, and target domain bootstrapping, which improves training efficiency while enhancing model stability. Experiments show that SETrLUSI has good convergence and outperforms related methods with a lower time cost.

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