(Hyper)graph Kernels over Simplicial Complexes
Graph kernels are one of the mainstream approaches when dealing with measuring similarity between graphs, especially for pattern recognition and machine learning tasks. In turn, graphs gained a lot of attention due to their modeling capabilities for several real-world phenomena ranging from bioinfor...
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doaj-dbea57c903fc4b1d9eb1d54187c7555e2020-11-25T03:43:35ZengMDPI AGEntropy1099-43002020-10-01221155115510.3390/e22101155(Hyper)graph Kernels over Simplicial ComplexesAlessio Martino0Antonello Rizzi1Department of Information Engineering, Electronics and Telecommunications, University of Rome “La Sapienza”, Via Eudossiana 18, 00184 Rome, ItalyDepartment of Information Engineering, Electronics and Telecommunications, University of Rome “La Sapienza”, Via Eudossiana 18, 00184 Rome, ItalyGraph kernels are one of the mainstream approaches when dealing with measuring similarity between graphs, especially for pattern recognition and machine learning tasks. In turn, graphs gained a lot of attention due to their modeling capabilities for several real-world phenomena ranging from bioinformatics to social network analysis. However, the attention has been recently moved towards hypergraphs, generalization of plain graphs where multi-way relations (other than pairwise relations) can be considered. In this paper, four (hyper)graph kernels are proposed and their efficiency and effectiveness are compared in a twofold fashion. First, by inferring the simplicial complexes on the top of underlying graphs and by performing a comparison among 18 benchmark datasets against state-of-the-art approaches; second, by facing a real-world case study (i.e., metabolic pathways classification) where input data are natively represented by hypergraphs. With this work, we aim at fostering the extension of graph kernels towards hypergraphs and, more in general, bridging the gap between structural pattern recognition and the domain of hypergraphs.https://www.mdpi.com/1099-4300/22/10/1155hypergraphsgraph kernelskernel methodssupport vector machinessimplicial complexestopological data analysis |
collection |
DOAJ |
language |
English |
format |
Article |
sources |
DOAJ |
author |
Alessio Martino Antonello Rizzi |
spellingShingle |
Alessio Martino Antonello Rizzi (Hyper)graph Kernels over Simplicial Complexes Entropy hypergraphs graph kernels kernel methods support vector machines simplicial complexes topological data analysis |
author_facet |
Alessio Martino Antonello Rizzi |
author_sort |
Alessio Martino |
title |
(Hyper)graph Kernels over Simplicial Complexes |
title_short |
(Hyper)graph Kernels over Simplicial Complexes |
title_full |
(Hyper)graph Kernels over Simplicial Complexes |
title_fullStr |
(Hyper)graph Kernels over Simplicial Complexes |
title_full_unstemmed |
(Hyper)graph Kernels over Simplicial Complexes |
title_sort |
(hyper)graph kernels over simplicial complexes |
publisher |
MDPI AG |
series |
Entropy |
issn |
1099-4300 |
publishDate |
2020-10-01 |
description |
Graph kernels are one of the mainstream approaches when dealing with measuring similarity between graphs, especially for pattern recognition and machine learning tasks. In turn, graphs gained a lot of attention due to their modeling capabilities for several real-world phenomena ranging from bioinformatics to social network analysis. However, the attention has been recently moved towards hypergraphs, generalization of plain graphs where multi-way relations (other than pairwise relations) can be considered. In this paper, four (hyper)graph kernels are proposed and their efficiency and effectiveness are compared in a twofold fashion. First, by inferring the simplicial complexes on the top of underlying graphs and by performing a comparison among 18 benchmark datasets against state-of-the-art approaches; second, by facing a real-world case study (i.e., metabolic pathways classification) where input data are natively represented by hypergraphs. With this work, we aim at fostering the extension of graph kernels towards hypergraphs and, more in general, bridging the gap between structural pattern recognition and the domain of hypergraphs. |
topic |
hypergraphs graph kernels kernel methods support vector machines simplicial complexes topological data analysis |
url |
https://www.mdpi.com/1099-4300/22/10/1155 |
work_keys_str_mv |
AT alessiomartino hypergraphkernelsoversimplicialcomplexes AT antonellorizzi hypergraphkernelsoversimplicialcomplexes |
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1724518910241275904 |