Predicting the exact urban places where crime is most likely to occur is one of the greatest interests for Police Departments. Therefore, the goal of the research presented in this paper is to identify specific urban areas where a crime could happen in Manhattan, NY for every hour of a day. The outputs from this research are the following: (i) predicted land uses that generates the top three most committed crimes in Manhattan, by using machine learning (random forest and logistic regression), (ii) identifying the exact hours when most of the assaults are committed, together with hot spots during these hours, by applying time series and hot spot analysis, (iii) built hourly prediction models for assaults based on the land use, by deploying l...
This report provides the results from the second of two grants funded by the National Institute of J...
Agent-based crime simulation research is still at a very early stage. While there were efforts in th...
This paper focuses on the operation and utilization of predictive policing software that generates s...
In recent years there has been growing interest in development of computer methods that can model an...
Nowadays, 23% of the world population lives in multi-million cities. In these metropolises, criminal...
Abstract Traditional crime prediction models based on census data are limited, as they fail to captu...
Crime is not spread evenly over space or time. This suggests that offenders favour certain areas and...
ABSTRACT This paper focuses on finding spatial and temporal criminal hotspots. It analyses two diff...
In environmental criminology, it is widely accepted that crime risk is affected by the legitimate an...
Police databases hold a large amount of crime data that could be used to inform us about current and...
This study combines traditional statistical methods with machine learning to better understand local...
Previous studies have shown that when a crime occurs, the risk of crime in adjacent areas increases....
This research aims to identify spatial and time patterns of theft in Manhattan, NY, to reveal urban ...
Environmental factors have both direct and indirect impacts on crime behavior decision making. This ...
Violent crime incidents occurring in Irvington, New Jersey, in 2007 and 2008 are used to assess the ...
This report provides the results from the second of two grants funded by the National Institute of J...
Agent-based crime simulation research is still at a very early stage. While there were efforts in th...
This paper focuses on the operation and utilization of predictive policing software that generates s...
In recent years there has been growing interest in development of computer methods that can model an...
Nowadays, 23% of the world population lives in multi-million cities. In these metropolises, criminal...
Abstract Traditional crime prediction models based on census data are limited, as they fail to captu...
Crime is not spread evenly over space or time. This suggests that offenders favour certain areas and...
ABSTRACT This paper focuses on finding spatial and temporal criminal hotspots. It analyses two diff...
In environmental criminology, it is widely accepted that crime risk is affected by the legitimate an...
Police databases hold a large amount of crime data that could be used to inform us about current and...
This study combines traditional statistical methods with machine learning to better understand local...
Previous studies have shown that when a crime occurs, the risk of crime in adjacent areas increases....
This research aims to identify spatial and time patterns of theft in Manhattan, NY, to reveal urban ...
Environmental factors have both direct and indirect impacts on crime behavior decision making. This ...
Violent crime incidents occurring in Irvington, New Jersey, in 2007 and 2008 are used to assess the ...
This report provides the results from the second of two grants funded by the National Institute of J...
Agent-based crime simulation research is still at a very early stage. While there were efforts in th...
This paper focuses on the operation and utilization of predictive policing software that generates s...