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An Improved Traffic Crime Predictive System using Multinomial Naive Bayes Text Classification Algorithm
Author(s) -
Rostam Affendi Hamzah,
Pedro Mayorga O.,
Chidiebere Ugwu
Publication year - 2019
Publication title -
international journal of computer applications
Language(s) - English
Resource type - Journals
ISSN - 0975-8887
DOI - 10.5120/ijca2019918483
Subject(s) - computer science , naive bayes classifier , bayes' theorem , multinomial distribution , machine learning , algorithm , artificial intelligence , data mining , bayesian probability , support vector machine , statistics , mathematics
Traffic law enforcement agencies in Nigeria have faced a huge setback as they do not have records of offenders or criminals that have been persecuted in the past. In this paper, a system was developed that can predict the possible class of traffic crime together with the penalty attached to that class of criminal offence that a known traffic criminal offender is most likely to commit next. The likelihood and frequency table will be constructed from a dataset of traffic crime data, the likelihood of a user falling under a particular class of traffic crime will also be established. Also, proposed to be designed and developed is a predictive system that uses object-oriented analysis and design methodology (OOADM), improved naïve bayes text classification algorithm to solve these problems. This will be achieved by implementing the stated model with python model-view-controller (MVC) framework known as Django Framework. This improved system is implemented using a real-time, cloud-hosted NOSQL database called FireBase which guarantees scalability. From the results, it was found out that the speed and predictability of probability of any user falling under a class 1 crime type was 81.42% and 10.39%, 8.19% for class 2 and class 3 respectively. General Terms Crime, improved, system, prediction, algorithm, online database, online, retrieval and storage.

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