Deep Set Prediction Networks
About
Current approaches for predicting sets from feature vectors ignore the unordered nature of sets and suffer from discontinuity issues as a result. We propose a general model for predicting sets that properly respects the structure of sets and avoids this problem. With a single feature vector as input, we show that our model is able to auto-encode point sets, predict the set of bounding boxes of objects in an image, and predict the set of attributes of these objects.
Yan Zhang, Jonathon Hare, Adam Pr\"ugel-Bennett• 2019
Related benchmarks
| Task | Dataset | Result | Rank | |
|---|---|---|---|---|
| DC-DC | Erdős-Rényi | Performance Ratio0.083 | 24 | |
| DE-DE | Erdős-Rényi | Performance Ratio37.8 | 24 | |
| DC-DE | Erdős-Rényi | Performance Ratio6 | 24 | |
| DE-DC | Erdős-Rényi | Performance Ratio0.042 | 24 | |
| Decision context migration (DC to DE) | Erdős-Rényi graph (ER) (test) | Performance Ratio0.06 | 17 | |
| Decision context migration (DC to DE) | Kronecker graph (Kro) (test) | Performance Ratio0.46 | 17 | |
| Decision context migration (DE to DC) | Kronecker graph (Kro) (test) | Performance Ratio57 | 17 | |
| Decision context migration (DE to DC) | Erdős-Rényi graph (ER) (test) | Performance Ratio0.04 | 17 |
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