FASE : A Fairness-Aware Spatiotemporal Event Graph Framework for Predictive Policing
Pronob Kumar Barman, Pronoy Kumar Barman, Plaban Kumar Barman, Rohan Mandar Salvi

TL;DR
FASE is a framework that combines spatiotemporal crime prediction with fairness constraints to improve patrol resource allocation and analyze bias in predictive policing.
Contribution
It introduces a novel fairness-aware spatiotemporal event graph model and a fairness constrained patrol allocation method for predictive policing.
Findings
Model achieves low validation and test loss in crime prediction.
Fairness constraints maintain demographic impact ratio within bounds.
Persistent detection gap indicates need for broader fairness interventions.
Abstract
Predictive policing systems that allocate patrol resources based solely on predicted crime risk can unintentionally amplify racial disparities through feedback driven data bias. We present FASE, a Fairness Aware Spatiotemporal Event Graph framework, which integrates spatiotemporal crime prediction with fairness constrained patrol allocation and a closed loop deployment feedback simulator. We model Baltimore as a graph of 25 ZIP Code Tabulation Areas and use 139,982 Part 1 crime incidents from 2017 to 2019 at hourly resolution, producing a sparse feature tensor. The prediction module combines a spatiotemporal graph neural network with a multivariate Hawkes process to capture spatial dependencies and self exciting temporal dynamics. Outputs are modeled using a Zero Inflated Negative Binomial distribution, suitable for overdispersed and zero heavy crime counts. The model achieves a…
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