Bayesian Predictive Synthesis for Dynamic Networks: Forecasting and Identifying Structural Mechanisms
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Abstract
Networks are shaped by competing structural mechanisms, such as communities, geometry, or hubs.
In a dynamic network the most predictive mechanism can change, and a model tied to one mechanism, or to fixed weights, cannot adapt as the dominant structure shifts.
We develop dynamic Bayesian predictive synthesis for networks, in which a mechanism is an agent forecasting the next snapshot's edges and a synthesis layer combines them with time-varying weights.
At each step the method returns a calibrated edge forecast and inference on the mechanism weights, with intervals valid given the fitted agents, so it also reports which mechanism is most informative.
Inference of this kind requires a sparse-safe parametrization and an identification theory, under which a single graph identifies and estimates the weights.
A sharp threshold separates distinguishable from indistinguishable mechanisms, a change in the active mechanism is tracked at an optimal per-switch cost, and for a single snapshot the method reduces to calibrated link prediction.
On real networks, simulations, and benchmarks, the synthesis gives accurate, calibrated forecasts and recovers the leading mechanism when