We introduce a methodology based on averaging similarity matrices with the aim of integrating the layers of a multiplex network into a single monoplex network. Multiplex networks are adopted for modelling a wide variety of real-world frameworks, such as multi-type relations in social, economic and biological structures. More specifically, multiplex networks are used when relations of different nature (layers) arise between a set of elements from a given population (nodes). A possible approach for analyzing multiplex similarity networks consists in aggregating the different layers in a single network (monoplex) which is a valid representation—in some sense—of all the layers. In order to obtain such an aggregated network, we propose a theoretical approach—along with its practical implementation—which stems on the concept of similarity matrix average. This methodology is finally applied to a multiplex similarity network of statistical journals, where the three considered layers express the similarity of the journals based on co-citations, common authors and common editors, respectively.

Similarity matrix average for aggregating multiplex networks / Baccini, Federica; Barabesi, Lucio; Petrovich, Eugenio. - In: JOURNAL OF PHYSICS. COMPLEXITY. - ISSN 2632-072X. - 4:2(2023). [10.1088/2632-072X/acda09]

Similarity matrix average for aggregating multiplex networks

Federica Baccini
Primo
Methodology
;
2023

Abstract

We introduce a methodology based on averaging similarity matrices with the aim of integrating the layers of a multiplex network into a single monoplex network. Multiplex networks are adopted for modelling a wide variety of real-world frameworks, such as multi-type relations in social, economic and biological structures. More specifically, multiplex networks are used when relations of different nature (layers) arise between a set of elements from a given population (nodes). A possible approach for analyzing multiplex similarity networks consists in aggregating the different layers in a single network (monoplex) which is a valid representation—in some sense—of all the layers. In order to obtain such an aggregated network, we propose a theoretical approach—along with its practical implementation—which stems on the concept of similarity matrix average. This methodology is finally applied to a multiplex similarity network of statistical journals, where the three considered layers express the similarity of the journals based on co-citations, common authors and common editors, respectively.
2023
multiplex network; similarity matrix; Jaccard coefficient; cosine similarity; SimRank, Fréchet mean; statistical journal network
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Similarity matrix average for aggregating multiplex networks / Baccini, Federica; Barabesi, Lucio; Petrovich, Eugenio. - In: JOURNAL OF PHYSICS. COMPLEXITY. - ISSN 2632-072X. - 4:2(2023). [10.1088/2632-072X/acda09]
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Note: DOI 10.1088/2632-072X/acda09
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/11573/1691414
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