Sebastian Sanokowski, Wilhelm Franz Berghammer, Sepp Hochreiter, and Sebastian Lehner

Approximation ratio as function of degrees and generation parameters.

Comparison of different methods on several evaluation metrics.

Several recent unsupervised learning methods use probabilistic approaches to solve combinatorial optimization (CO) problems based on the assumption of statistically independent solution variables. We demonstrate that this assumption imposes performance limitations in particular on difficult problem instances. Our results corroborate that an autoregressive approach which captures statistical dependencies among solution variables yields superior performance on many popular CO problems. We introduce Subgraph Tokenization in which the configuration of a set of solution variables is represented by a single token. This tokenization technique alleviates the drawback of the long sequential sampling procedure which is inherent to autoregressive methods without sacrificing expressivity. Importantly, we theoretically motivate an annealed entropy regularization and show empirically that it is essential for efficient and stable learning.

NeurIPS 2023, 2023-11-02.

Download
View paper
IARAI Authors
Dr Sepp Hochreiter, Sebastian Lehner
Research
Graph Neural Networks
Keywords
Combinatorial Optimization, Entropy Regularization, Graph Neural Networks, Reinforcement Learning

©2023 IARAI - INSTITUTE OF ADVANCED RESEARCH IN ARTIFICIAL INTELLIGENCE

Imprint | Privacy Policy

Stay in the know with developments at IARAI

We can let you know if there’s any

updates from the Institute.
You can later also tailor your news feed to specific research areas or keywords (Privacy)
Loading

Log in with your credentials

Forgot your details?

Create Account