Less Is More - On the Importance of Sparsification for Transformers and Graph Neural Networks for TSP
Preprint, 2024

Most of the recent studies tackling routing problems like the Traveling Salesman Problem (TSP) with machine learning use a transformer or Graph Neural Network (GNN) based encoder architecture. However, many of them apply these encoders naively by allowing them to aggregate information over the whole TSP instances. We, on the other hand, propose a data preprocessing method that allows the encoders to focus on the most relevant parts of the TSP instances only. In particular, we propose graph sparsification for TSP graph representations passed to GNNs and attention masking for TSP instances passed to transformers where the masks correspond to the adjacency matrices of the sparse TSP graph representations. Furthermore, we propose ensembles of different sparsification levels allowing models to focus on the most promising parts while also allowing information flow between all nodes of a TSP instance. In the experimental studies, we show that for GNNs appropriate sparsification and ensembles of different sparsification levels lead to substantial performance increases of the overall architecture. We also design a new, state-of-the-art transformer encoder with ensembles of attention masking. These transformers increase model performance from a gap of 0.16% to 0.10% for TSP instances of size 100 and from 0.02% to 0.00% for TSP instances of size 50.

Travelling Salesman Problem

Transportation Network

Graph Neural Networks

Vehicle Routing Problem

Machine Learning

Transformers

Author

Attila Lischka

Chalmers, Electrical Engineering, Systems and control

Jiaming Wu

Chalmers, Architecture and Civil Engineering, Geology and Geotechnics

Rafael Basso

Volvo Group

Morteza Haghir Chehreghani

Chalmers, Computer Science and Engineering (Chalmers), Data Science and AI

Balázs Adam Kulcsár

Chalmers, Electrical Engineering, Systems and control

LEAR: Robust LEArning methods for electric vehicle Route selection

Swedish Electromobility Centre, 2023-01-01 -- 2026-12-31.

Areas of Advance

Transport

Subject Categories

Computer Science

Discrete Mathematics

Related datasets

URI: https://arxiv.org/abs/2403.17159

More information

Created

3/28/2024