Our new X account is live! Follow @wizwand_team for updates
WorkDL logo mark

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

TaskDatasetResultRank
DC-DCErdős-Rényi
Performance Ratio0.083
24
DE-DEErdős-Rényi
Performance Ratio37.8
24
DC-DEErdős-Rényi
Performance Ratio6
24
DE-DCErdős-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
Showing 8 of 8 rows

Other info

Follow for update