TL;DR
This paper systematically evaluates numerous link prediction algorithms across diverse networks, demonstrating that combining them into stacked models yields near-optimal accuracy, with performance varying by network domain.
Contribution
It introduces a meta-learning approach to combine multiple link predictors, achieving nearly optimal results across various network types.
Findings
Stacked models outperform individual predictors.
Prediction accuracy varies significantly across domains.
Near-optimal performance is achievable with combined models.
Abstract
Most real-world networks are incompletely observed. Algorithms that can accurately predict which links are missing can dramatically speedup the collection of network data and improve the validity of network models. Many algorithms now exist for predicting missing links, given a partially observed network, but it has remained unknown whether a single best predictor exists, how link predictability varies across methods and networks from different domains, and how close to optimality current methods are. We answer these questions by systematically evaluating 203 individual link predictor algorithms, representing three popular families of methods, applied to a large corpus of 548 structurally diverse networks from six scientific domains. We first show that individual algorithms exhibit a broad diversity of prediction errors, such that no one predictor or family is best, or worst, across all…
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