Modeling noisy time-series data of crime with stochastic differential equations

Stoch Environ Res Risk Assess. 2023;37(3):1053-1066. doi: 10.1007/s00477-022-02334-8. Epub 2022 Nov 1.

Abstract

We develop and calibrate stochastic continuous models that capture crime dynamics in the city of Valencia, Spain. From the emergency phone, data corresponding to three crime events, aggressions, stealing and women alarms, are available from the year 2010 until 2020. As the resulting time series, with monthly counts, are highly noisy, we decompose them into trend and seasonality parts. The former is modeled by geometric Brownian motions, both uncorrelated and correlated, and the latter is accommodated by randomly perturbed sine-cosine waves. Albeit simple, the models exhibit high ability to simulate the real data and show promising for crimes-interaction identification and short-term predictive policing.

Keywords: Correlated data; Crime-incidence assessment; Inverse problem; Simulations; Stochastic differential equation; Trend and seasonality.