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  4. Neural Set Function Extensions: Learning with Discrete Functions in High Dimensions
 
conference paper

Neural Set Function Extensions: Learning with Discrete Functions in High Dimensions

Karalias, Nikolaos  
•
Robinson, Joshua
•
Loukas, Andreas  
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2022
[Proceedings of NeurIPS 2022]
NeurIPS 2022 36th Conference on Neural Information Processing Systems

Integrating functions on discrete domains into neural networks is key to developing their capability to reason about discrete objects. But, discrete domains are (I) not naturally amenable to gradient-based optimization, and (II) incompatible with deep learning architectures that rely on representations in high-dimensional vector spaces. In this work, we address both difficulties for set functions, which capture many important discrete problems. First, we develop a framework for extending set functions onto low-dimensional continuous domains, where many extensions are naturally defined. Our framework subsumes many well-known extensions as special cases. Second, to avoid undesirable low-dimensional neural network bottlenecks, we convert low-dimensional extensions into representations in high-dimensional spaces, taking inspiration from the success of semidefinite programs for combinatorial optimization. Empirically, we observe benefits of our extensions for unsupervised neural combinatorial optimization, in particular with high-dimensional representations.

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Type
conference paper
Author(s)
Karalias, Nikolaos  
Robinson, Joshua
Loukas, Andreas  
Jegelka, Stefanie
Date Issued

2022

Published in
[Proceedings of NeurIPS 2022]
Total of pages

31

Editorial or Peer reviewed

REVIEWED

Written at

EPFL

EPFL units
LTS2  
Event nameEvent placeEvent date
NeurIPS 2022 36th Conference on Neural Information Processing Systems

New Orleans, Louisiana, United States

November 28-December 3, 2022

Available on Infoscience
January 9, 2023
Use this identifier to reference this record
https://infoscience.epfl.ch/handle/20.500.14299/193636
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