Abstract

Crime Forecasting refers to the basic process of predicting crimes before they occur. Crimes are a common social problem affecting the quality of life and the economic growth of a society. A crime is a deliberate act that can cause physical or psychological harm, as well as property damage or loss, and can lead to punishment by a state or other authority according to the severity of the crime. For our daily purposes we have to go many places every day and many times in our daily lives we face numerous security issues such as hijacking, kidnapping, harassment, etc. Daily there are huge numbers of crimes occurring frequently. These require keeping track of all the crimes and maintaining a database for same which may be used for future reference. The current problem faced are maintaining of proper dataset of crime and analyzing this data to help in predicting and solving crimes in future. The main objective of this project is to analyze dataset which consist of numerous crimes and predicting the type of crime which might occur in future depending upon various conditions. We will be using the technique of machine learning and data science for crime prediction of Chicago and Los Angeles crime data set. The K-Nearest Neighbor (KNN) classification and various other algorithms will be tested for crime prediction and one with better accuracy will be used for training. The main purpose of this project is to give a brief idea of how machine learning can be used by the law enforcement agencies to detect, predict and solve crimes at a much faster rate and thus reduce the crime rate. It is not restricted to Chicago and Los Angeles, this can be used in other states or countries depending upon the availability of the dataset.

Full Text
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