Forecasting Crimes Using Autoregressive Models | IEEE Conference Publication | IEEE Xplore

Forecasting Crimes Using Autoregressive Models


Abstract:

As a result of steadily increasing urbanization, by 2030 more than sixty percent of the global population will live in cities. This phenomenon is stimulating significant ...Show More

Abstract:

As a result of steadily increasing urbanization, by 2030 more than sixty percent of the global population will live in cities. This phenomenon is stimulating significant economic and social transformations, both positive (such as, increased opportunities offered in urban areas) and negative (such as, increased crime and pressures on city budgets). Nevertheless, new technologies are enabling police departments to access growing volumes of crime-related data that can be analyzed to understand patterns and trends. Such knowledge is useful to anticipate criminal activity and thus to optimize public safety resource allocation (officers, patrol routes, etc.) through mathematical techniques to predict crimes. This paper presents an approach, based on auto-regressive models, for reliably forecasting crime trends in urban areas. In particular, the main goal of the work is to design a predictive model to forecast the number of crimes that will happen in rolling time horizons. As a case study, we present the analysis performed on an area of Chicago, using a variety of open data sources available for exploration and examination through the University of Chicagos Plenario platform. Experimental evaluation shows that the proposed methodology predicts the number of crimes with an accuracy of 84% on one-year-ahead forecasts and of 80% on two-year-ahead forecasts.
Date of Conference: 08-12 August 2016
Date Added to IEEE Xplore: 13 October 2016
ISBN Information:
Conference Location: Auckland, New Zealand

I. Introduction

The world is rapidly urbanizing and undergoing the largest wave of urban growth in history. According to a United Nations report urban population is expected to grow from 2.86 billion in 2000 to 4.98 billion in 2030 [1]. This translates to roughly 60% of the global population living in cities by 2030. Much of this urbanization is already bringing huge social, economic and environmental transformations and at the same time presenting challenges in city management issues, like resource planning (water, electricity), traffic, air and water quality, public policy and public safety services.

Contact IEEE to Subscribe

References

References is not available for this document.