Generative Models for Global Collaboration Relationships
Ertugrul N. Ciftcioglu, Ram Ramanathan, Prithwish Basu

TL;DR
This paper introduces GeneSCs, a generative algorithm for modeling collaboration relationships using simplicial complexes, capturing complex group interactions and matching real-world data distributions.
Contribution
It proposes a novel SC growth model based on facet-based preferential attachment, incorporating real-world facet size distributions and variants for specific collaboration domains.
Findings
Facet degree distribution follows a power law in large SCs.
GeneSCs accurately replicate real-world co-authorship data.
Variants perform well in scientific and movie collaboration domains.
Abstract
When individuals interact with each other and meaningfully contribute toward a common goal, it results in a collaboration, as can be seen in many walks of life such as scientific research, motion picture production, or team sports. The artifacts resulting from a collaboration (e.g. papers, movies) are best captured using a hypergraph model, whereas the relation of who has collaborated with whom is best captured via an abstract simplicial complex (SC). In this paper, we propose a generative algorithm GeneSCs for SCs modeling fundamental collaboration relations, primarily based on preferential attachment. The proposed network growth process favors attachment that is preferential not to an individual's degree, i.e., how many people has he/she collaborated with, but to his/her facet degree, i.e., how many maximal groups or facets has he/she collaborated within. Unlike graphs, in SCs, both…
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