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.
Related benchmarks
| Task | Dataset | Result | Rank | |
|---|---|---|---|---|
| Set Ranking | Friendster (Overall) | NDCG84.29 | 60 | |
| Set Ranking | Friendster (Mild) | NDCG84.11 | 60 | |
| Set Ranking | Friendster (Severe) | NDCG83.96 | 60 | |
| Similar Set Ranking | Friendster Clean | NDCG84.45 | 60 | |
| Image Classification | NWPU-RESISC45 | Accuracy53.03 | 12 | |
| Image Classification | NWPU-RESISC45 Mild | Accuracy54.95 | 10 | |
| Image Classification | NWPU-RESISC45 Severe | Accuracy31.89 | 10 | |
| Point Cloud Classification | ModelNet Overall | Accuracy82.86 | 10 | |
| Point Cloud Classification | ModelNet Clean | Accuracy86.32 | 10 | |
| Point Cloud Classification | ModelNet Mild | Accuracy85.68 | 10 |