Dynamic Attention (DynAttn): Interpretable High-Dimensional Spatio-Temporal Forecasting (with Application to Conflict Fatalities)
Stefano M. Iacus, Haodong Qi, Marcello Carammia, and Thomas Juneau

TL;DR
DynAttn is an interpretable, high-dimensional spatio-temporal forecasting model that significantly improves conflict fatality predictions and offers insights into regional conflict dynamics.
Contribution
The paper introduces DynAttn, a novel interpretable deep learning framework combining attention mechanisms and zero-inflated models for conflict data forecasting.
Findings
DynAttn outperforms existing models across multiple forecast horizons.
It provides transparent diagnostics and interpretability of conflict drivers.
The model performs especially well in sparse, high-resolution settings.
Abstract
Forecasting conflict-related fatalities remains a central challenge in political science and policy analysis due to the sparse, bursty, and highly non-stationary nature of violence data. We introduce DynAttn, an interpretable dynamic-attention forecasting framework for high-dimensional spatio-temporal count processes. DynAttn combines rolling-window estimation, shared elastic-net feature gating, a compact weight-tied self-attention encoder, and a zero-inflated negative binomial (ZINB) likelihood. This architecture produces calibrated multi-horizon forecasts of expected casualties and exceedance probabilities, while retaining transparent diagnostics through feature gates, ablation analysis, and elasticity measures. We evaluate DynAttn using global country-level and high-resolution PRIO-grid-level conflict data from the VIEWS forecasting system, benchmarking it against established…
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Taxonomy
TopicsTransboundary Water Resource Management · Computational and Text Analysis Methods · Environmental and Biological Research in Conflict Zones
