It is the responsibility of the San Francisco Police Department to protect the local community from various crimes and to improve the local security environment. With the development of modern statistics tools, we can learn from the past data and give suggestions for future strategy.In this thesis, we study the San Francisco Police Department crime dataset from 01/01/2013 through 05/13/2015. Informative analysis regarding timing and location for different crimes are examined. Visualization methods are proposed for related features. We also discuss possibilities of predicting the crime categories given time and location data using the k-nearest-neighbor model and the logistic regression model
Crime events in cities around the world have been proven to be unevenly distributed in space and tim...
Abstract-Recently, interest has been increasing in crime analytics in which time series clustering r...
This paper is a review paper of journal and conference papers published in the field of crime predic...
This thesis report is submitted in partial fulfillment of the requirements for the degree of Bachelo...
Police databases hold a large amount of crime data that could be used to inform us about current and...
In recent years there has been growing interest in development of computer methods that can model an...
ABSTRACT This paper focuses on finding spatial and temporal criminal hotspots. It analyses two diff...
Crime is one of the biggest and dominating problem in our society and its forestallment is an import...
Crime has been prevalent in our society for a very long time and it continues to be so even today. T...
Law enforcement agencies regularly collect crime scene information. There exists, however, no detail...
Crime analysis and prevention is a systematic approach for identifying and analyzing patterns and tr...
The Los Angeles Police Department (LAPD) often faces the task of predicting crime before it happens ...
This study’s aim is to reveal statistically significant hot spots and temporal patterns of property ...
Crime analysis using data mining techniques have been a possible solution to aid law enforcement off...
In this paper, we describe a crime predicting method which forecasts the types of crimes that will o...
Crime events in cities around the world have been proven to be unevenly distributed in space and tim...
Abstract-Recently, interest has been increasing in crime analytics in which time series clustering r...
This paper is a review paper of journal and conference papers published in the field of crime predic...
This thesis report is submitted in partial fulfillment of the requirements for the degree of Bachelo...
Police databases hold a large amount of crime data that could be used to inform us about current and...
In recent years there has been growing interest in development of computer methods that can model an...
ABSTRACT This paper focuses on finding spatial and temporal criminal hotspots. It analyses two diff...
Crime is one of the biggest and dominating problem in our society and its forestallment is an import...
Crime has been prevalent in our society for a very long time and it continues to be so even today. T...
Law enforcement agencies regularly collect crime scene information. There exists, however, no detail...
Crime analysis and prevention is a systematic approach for identifying and analyzing patterns and tr...
The Los Angeles Police Department (LAPD) often faces the task of predicting crime before it happens ...
This study’s aim is to reveal statistically significant hot spots and temporal patterns of property ...
Crime analysis using data mining techniques have been a possible solution to aid law enforcement off...
In this paper, we describe a crime predicting method which forecasts the types of crimes that will o...
Crime events in cities around the world have been proven to be unevenly distributed in space and tim...
Abstract-Recently, interest has been increasing in crime analytics in which time series clustering r...
This paper is a review paper of journal and conference papers published in the field of crime predic...