Sequential Stacking Link Prediction Algorithms for Temporal Networks

Autor: Xie He, Amir Ghasemian, Eun Lee, Aaron Clauset, Peter Mucha
Rok vydání: 2023
Popis: Link prediction algorithms are indispensable tools in many scientific applications by speeding up network data collection and imputing missing connections. However, in many systems, links change over time and it remains unclear how to optimally exploit such temporal information for link predictions in such networks. Here, we show that many temporal topological features, in addition to having high computational cost, are less accurate in temporal link prediction than sequentially stacked static network features. This sequential stacking link prediction method uses 41 static network features that avoids detailed feature engineering choices and is capable of learning a highly accurate predictive distribution of future connections from historical data. We demonstrate that this algorithm works well for both partially observed and completely unobserved target layers, and achieves near-optimal AUC on two temporal stochastic block models. Finally, we empirically illustrate that stacking multiple predictive methods together further improves performance on 19 real-world temporal networks from different domains.
Databáze: OpenAIRE