The Robustness of Structural Features in Species Interaction Networks
Sanaz Hasanzadeh Fard, Emily Dolson

TL;DR
This study evaluates how different structural metrics of species interaction networks are affected by missing data, highlighting which metrics are more robust for ecological network analysis.
Contribution
It systematically assesses the robustness of various network metrics across multiple ecological interaction types under data incompleteness.
Findings
Community detection algorithms vary in robustness to missing data.
Some network metrics are more sensitive to missing edges than others.
Robustness of metrics depends on interaction type.
Abstract
Species interaction networks are a powerful tool for describing ecological communities; they typically contain nodes representing species, and edges representing interactions between those species. For the purposes of drawing abstract inferences about groups of similar networks, ecologists often use graph topology metrics to summarize structural features. However, gathering the data that underlies these networks is challenging, which can lead to some interactions being missed. Thus, it is important to understand how much different structural metrics are affected by missing data. To address this question, we analyzed a database of 148 real-world bipartite networks representing four different types of species interactions (pollination, host-parasite, plant-ant, and seed-dispersal). For each network, we measured six different topological properties: number of connected components, variance…
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Taxonomy
TopicsPlant and animal studies · Complex Network Analysis Techniques · Genetic diversity and population structure
