Data-driven chance-constrained optimization under Wasserstein ambiguity > 세미나

본문 바로가기
사이트 내 전체검색


세미나

모드선택 :              
세미나 신청은 모드에서 세미나실 사용여부를 먼저 확인하세요

Data-driven chance-constrained optimization under Wasserstein ambiguit…

김수현 0 7520
구분
일정 2021-04-20 16:30 ~ 17:30
강연자 이다빈 (IBS-DIMAG)
기타
담당교수 서인석
※ 시간: 16:40-17:10 ※ Zomm 병행: https://snu-ac-kr.zoom.us/j/2473239867 Modern optimization problems often involve uncertain model parameters, but the probability distribution quantifying the uncertainty is known ambiguously. Motivated by this, distributionally robust optimization frameworks are developed to provide a systematic way of hedging against the distributional ambiguity. In this talk, we focus on chance-constrained optimization, where the decision-maker needs to find a solution satisfying given constraints with high probability while optimizing the objective. We present a mixed-integer programming reformulation of the problem under Wasserstein ambiguity and show how discrete optimization techniques can help scale up computational efficiency. This is based on joint works with Nam Ho-Nguyen, Fatma Kilinc-Karzan, and Simge Kucukyavuz.
세미나명

   

상단으로

Research Institute of Mathematics
서울특별시 관악구 대학동 서울대학교 자연과학대학 129동 305호
Tel. 02-880-6562 / Fax. 02-877-6541 su305@snu.ac.kr

COPYRIGHT ⓒ 자연과학대학 수학연구소 ALL RIGHT RESERVED.