@article{lin_fang_fang_gao_2024, title={Distributionally robust chance-constrained kernel-based support vector machine}, volume={170}, ISSN={["1873-765X"]}, DOI={10.1016/j.cor.2024.106755}, journal={COMPUTERS & OPERATIONS RESEARCH}, author={Lin, Fengming and Fang, Shu-Cherng and Fang, Xiaolei and Gao, Zheming}, year={2024}, month={Oct} } @misc{lin_fang_gao_2022, title={DISTRIBUTIONALLY ROBUST OPTIMIZATION: A REVIEW ON THEORY AND APPLICATIONS}, volume={12}, ISSN={["2155-3297"]}, url={http://www.scopus.com/inward/record.url?eid=2-s2.0-85121985630&partnerID=MN8TOARS}, DOI={10.3934/naco.2021057}, abstractNote={
In this paper, we survey the primary research on the theory and applications of distributionally robust optimization (DRO). We start with reviewing the modeling power and computational attractiveness of DRO approaches, induced by the ambiguity sets structure and tractable robust counterpart reformulations. Next, we summarize the efficient solution methods, out-of-sample performance guarantee, and convergence analysis. Then, we illustrate some applications of DRO in machine learning and operations research, and finally, we discuss the future research directions.
}, number={1}, journal={NUMERICAL ALGEBRA CONTROL AND OPTIMIZATION}, author={Lin, Fengming and Fang, Xiaolei and Gao, Zheming}, year={2022}, month={Mar}, pages={159–212} }