바로가기메뉴

본문 바로가기 주메뉴 바로가기

ACOMS+ 및 학술지 리포지터리 설명회

  • 한국과학기술정보연구원(KISTI) 서울분원 대회의실(별관 3층)
  • 2024년 07월 03일(수) 13:30
 

logo

Classification Model and Crime Occurrence City Forecasting Based on Random Forest Algorithm

인공지능연구 / Korean Journal of Artificial Intelligence, (E)2508-7894
2022, v.10 no.1, pp.21-25
https://doi.org/https://doi.org/10.24225/kjai.2022.10.1.21
KANG, Sea-Am (Department of Medical IT, Eulji University)
CHOI, Jeong-Hyun (LG Uplus corporation)
KANG, Min-soo (Department of Big data medical convergence, Eulji University)

Abstract

Korea has relatively less crime than other countries. However, the crime rate is steadily increasing. Many people think the crime rate is decreasing, but the crime arrest rate has increased. The goal is to check the relationship between CCTV and the crime rate as a way to lower the crime rate, and to identify the correlation between areas without CCTV and areas without CCTV. If you see a crime that can happen at any time, I think you should use a random forest algorithm. We also plan to use machine learning random forest algorithms to reduce the risk of overfitting, reduce the required training time, and verify high-level accuracy. The goal is to identify the relationship between CCTV and crime occurrence by creating a crime prevention algorithm using machine learning random forest techniques. Assuming that no crime occurs without CCTV, it compares the crime rate between the areas where the most crimes occur and the areas where there are no crimes, and predicts areas where there are many crimes. The impact of CCTV on crime prevention and arrest can be interpreted as a comprehensive effect in part, and the purpose isto identify areas and frequency of frequent crimes by comparing the time and time without CCTV.

keywords
Random Forest Algorithm, Crime Rates, CCTV, Machine Learning Model

인공지능연구