글번호
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KAIST 하우석 교수 초청 강연 안내 (2025. 11. 7.)

작성일
2025.10.22
수정일
2025.10.22
작성자
통계학과
조회수
228

<통계학과 외부 연사 초청 강연 안내>



1. 연사 : 하우석 교수 (KAIST 수리과학과)

2. 주제 : When felabeled target data suffice: a theory of semi-supervised domain adaptation via fine-tuning from multiple adaptive starts

3. 날짜 : 2025년 11월 7일(금) 오후4시

4. 장소 : 사이언스홀 (자1-100호)

5. 발표 초록 :  

Semi-supervised domain adaptation (SSDA) aims to achieve high predictive performance in the target domain with limited labeled target data by exploiting abundant source and unlabeled target data. Despite its significance in numerous applications, theory on the effectiveness of SSDA remains largely unexplored, particularly in scenarios involving various types of source-target distributional shifts. In this talk, I will present a theoretical framework based on structural causal models (SCMs) which allows us to analyze and quantify the performance of SSDA methods when labeled target data is limited. Within this framework, I introduce three SSDA methods, each having a fine-tuning strategy tailored to a distinct assumption about the source and target relationship. Under each assumption, I demonstrate how extending an unsupervised domain adaptation (UDA) method to SSDA can achieve minimax-optimal target performance with limited target labels. Finally, when the relationship between source and target data is only vaguely knowna common practical concernI will describe the Multi Adaptive-Start FineTuning (MASFT) algorithm, which fine-tunes UDA models from multiple starting points and selects the best-performing one based on a small hold-out target validation dataset. Combined with model selection guarantees, MASFT achieves near-optimal target predictive performance across a broad range of types of distributional shifts while significantly reducing the need for labeled target data.

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