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Creators/Authors contains: "Wu, Keru"

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  1. Domainadaptation(DA)isastatisticallearningproblemthatariseswhenthedistribution ofthesourcedatausedtotrainamodeldi↵ersfromthatofthetargetdatausedtoevaluate themodel. WhilemanyDAalgorithmshavedemonstratedconsiderableempiricalsuccess, blindly applying these algorithms can often lead to worse performance on new datasets. Toaddressthis, itiscrucialtoclarifytheassumptionsunderwhichaDAalgorithmhas good target performance. In this work, we focus on the assumption of the presence of conditionally invariant components (CICs), which are relevant for prediction and remain conditionally invariant across the source and target data. We demonstrate that CICs, whichcanbeestimatedthroughconditionalinvariantpenalty(CIP),playthreeprominent rolesinprovidingtargetriskguaranteesinDA.First,weproposeanewalgorithmbased on CICs, importance-weighted conditional invariant penalty (IW-CIP), which has target riskguaranteesbeyondsimplesettingssuchascovariateshiftandlabelshift. Second,we showthatCICshelpidentifylargediscrepanciesbetweensourceandtargetrisksofother DAalgorithms. Finally,wedemonstratethatincorporatingCICsintothedomaininvariant projection(DIP)algorithmcanaddressitsfailurescenariocausedbylabel-flippingfeatures. We support our new algorithms and theoretical findings via numerical experiments on syntheticdata,MNIST,CelebA,Camelyon17,andDomainNetdatasets. 
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    Free, publicly-accessible full text available May 25, 2026