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Crime Pattern Analysis based on Machine Learning and Big Data using Apache Spark

원문정보

Palash Sontakke, Chang-Soo Kim

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초록

영어

The global population is increasing rapidly because of increasing urbanization and such increasing urbanization directs the up-growing need of urban safety and preventions. This urbanization is also responsible for two things that is increased job opportunities and increased the crime rates. In this era technology has gone far more forward in a positive way. By making use of these technologies such as machine learning, artificial intelligence and big data we presented an approach through which crime pattern analysis is done. We have used apache spark (scala-programming) and machine learning algorithm for predictive crime pattern analysis. The data that we have used is a real-world data set based on Chicago city of United State of America. Our main goal of work is to define a predictive crime analysis which shows top crime patterns related to the top community areas of Chicago city.

목차

Abstract
 1. Introduction
 2. Crime Analysis and data
  2.1 Data Description
  2.2 Crime Analysis using Apache Spark
 3. Predictive Crime analytics with spark ML libraries
  3.1 Logistic Regression
  3.2 Prediction Model
  3.3 Results of predictive analysis
 4. Conclusion
 References

저자정보

  • Palash Sontakke Department of IT Convergence and Application Engineering, Pukyong National University Busan, South Korea.
  • Chang-Soo Kim Department of IT Convergence and Application Engineering, Pukyong National University Busan, South Korea.

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