San Francisco Crime Classification 2015
نویسندگان
چکیده
We aim to classify the type of crimes committed within San Francisco, given the time and location of a criminal occurrence. This study is important and beneficial. Using data mining approaches, we can predict the location, type and time of criminal occurrences in the city. We also explore some interesting questions, for example, if more crimes occur on certain days of the week or certain times of the day.
منابع مشابه
Crime Prediction in San Fransisco
In June 2015, Kaggle began a competition named “San Francisco Crime Classification”[8], ending in June 2016. The competition’s dataset caught our attention due the subject being very tangible, with crime being at the forefront of modern media and to San Francisco being culturally significant due to its current tech industry. The dataset is also described by geographic and temporal features, the...
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