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Distributionally Robust Set Representation Learning Under Inference-Time Element Corruption

About

Standard Set Representation Learning methods typically excel on curated data but often overlook the challenge of inference-time element corruption. This refers to scenarios where deployed models encounter element-level degradations, such as outliers or missing components, that may distort set representation and degrade performance. We propose SW-DRSO, a distributionally robust optimization framework tailored for sets. Rather than minimizing loss solely on observed training data, SW-DRSO optimizes a tractable surrogate of the worst-case expected loss over a family of plausible inference-time variations. We introduce a barycentric adversary that approximates the intractable search over corrupted sets by a differentiable training-time optimization over simplex weights. Extensive experiments across four tasks demonstrate that SW-DRSO effectively enhances robustness against corruption while maintaining high overall performance.

Yankai Chen, Hanrong Zhang, Bowei He, Philip S.Yu, Xue (Steve) Liu• 2026

Related benchmarks

TaskDatasetResultRank
Set RankingFriendster (Overall)
NDCG84.29
60
Set RankingFriendster (Mild)
NDCG84.11
60
Set RankingFriendster (Severe)
NDCG83.96
60
Similar Set RankingFriendster Clean
NDCG84.45
60
Image ClassificationNWPU-RESISC45
Accuracy53.03
12
Image ClassificationNWPU-RESISC45 Mild
Accuracy54.95
10
Image ClassificationNWPU-RESISC45 Severe
Accuracy31.89
10
Point Cloud ClassificationModelNet Overall
Accuracy82.86
10
Point Cloud ClassificationModelNet Clean
Accuracy86.32
10
Point Cloud ClassificationModelNet Mild
Accuracy85.68
10
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