Topological Graph Signal Compression
Abstract
Recently emerged Topological Deep Learning (TDL) methods aim to extend current Graph Neural Networks (GNN) by naturally processing higher-order interactions, going beyond the pairwise relations and local neighborhoods defined by graph representations. In this paper we propose a novel TDL-based method for compressing signals over graphs, consisting in two main steps: first, disjoint sets of higher-order structures are inferred based on the original signal --by clustering datapoints into collections; then, a topological-inspired message passing gets a compressed representation of the signal within those multi-element sets. Our results show that our framework improves both standard GNN and feed-forward architectures in compressing temporal link-based signals from two real-word Internet Service Provider Networks' datasets --from up to better reconstruction errors across all evaluation scenarios--, suggesting that it better captures and exploits spatial and temporal correlations over the whole graph-based network structure.
Cite
@article{arxiv.2308.11068,
title = {Topological Graph Signal Compression},
author = {Guillermo Bernárdez and Lev Telyatnikov and Eduard Alarcón and Albert Cabellos-Aparicio and Pere Barlet-Ros and Pietro Liò},
journal= {arXiv preprint arXiv:2308.11068},
year = {2023}
}
Comments
Accepted as Oral at the Second Learning on Graphs Conference (LoG 2023). The recording of the talk can be found in https://www.youtube.com/watch?v=OcruIkiRkiU