AbstractIdentifying related offences in a criminal investigation is an important goal for crime analysts. This can deliver evidence that can assist in apprehension of suspects and better attribution of past crimes. The use of pattern based approaches has the potential to assist crime experts in discovering new patterns of criminal activity. Hence, research in this area continues. This paper revisits frequent pattern growth models for crime pattern mining. Frequent pattern (FP) based approaches, such as the FP-Growth model, have been identified to be more effective than techniques proposed in the past, such as Apriori. Therefore, this research proposes a descriptive statistical approach, based on a quartile (floor-ceil) function, for the min...
Law enforcement agencies regularly collect crime scene information. There exists, however, no detail...
Crime prediction using machine learning and data fusion assimilation has become a hot topic. Most of...
This research project is to enhanced predictive crime mapping model with data mining technique to pr...
AbstractIdentifying related offences in a criminal investigation is an important goal for crime anal...
A Dissertation Submitted in Partial Fulfilment of the Requirements for the Degree of Doctor of Phil...
Our goal is to automatically detect patterns of crime. Among a large set of crimes that happen ever...
Frequent pattern (itemset) mining plays an important role in association rule mining. The Apriori &a...
Crime pattern analysis (CPA) is the process of analytical reasoning facilitated by an understanding...
In this work, we consider the problem of predicting criminal behavior, and propose a method for disc...
Crime is one of the major problems encountered in a society. Thus, there is an urgent need for secur...
Abstract — Discovering related offense case subsets is a crucial task for intelligence analysts in c...
Police analysts are required to unravel the complexities in data to assist operational personnel in ...
Crime is today a salient fact, an integral part of the risks we face in everyday life. The concern a...
Around 22,000 burglaries are reported to the Swedish police in 2012. It is not only inefficient to a...
Crime is hard to anticipate since it occurs at random and can occur anywhere at any moment, making i...
Law enforcement agencies regularly collect crime scene information. There exists, however, no detail...
Crime prediction using machine learning and data fusion assimilation has become a hot topic. Most of...
This research project is to enhanced predictive crime mapping model with data mining technique to pr...
AbstractIdentifying related offences in a criminal investigation is an important goal for crime anal...
A Dissertation Submitted in Partial Fulfilment of the Requirements for the Degree of Doctor of Phil...
Our goal is to automatically detect patterns of crime. Among a large set of crimes that happen ever...
Frequent pattern (itemset) mining plays an important role in association rule mining. The Apriori &a...
Crime pattern analysis (CPA) is the process of analytical reasoning facilitated by an understanding...
In this work, we consider the problem of predicting criminal behavior, and propose a method for disc...
Crime is one of the major problems encountered in a society. Thus, there is an urgent need for secur...
Abstract — Discovering related offense case subsets is a crucial task for intelligence analysts in c...
Police analysts are required to unravel the complexities in data to assist operational personnel in ...
Crime is today a salient fact, an integral part of the risks we face in everyday life. The concern a...
Around 22,000 burglaries are reported to the Swedish police in 2012. It is not only inefficient to a...
Crime is hard to anticipate since it occurs at random and can occur anywhere at any moment, making i...
Law enforcement agencies regularly collect crime scene information. There exists, however, no detail...
Crime prediction using machine learning and data fusion assimilation has become a hot topic. Most of...
This research project is to enhanced predictive crime mapping model with data mining technique to pr...