Crime Prediction using Machine Learning Algorithms
Journal:
GRENZE International Journal of Engineering and Technology
Authors:
Chengamma Chitteti, Pranathi Kunapareddy, M. Dharani, Bapathi HimaKeerthi, Chintapatla Sravani
Volume:
10
Issue:
2
Grenze ID:
01.GIJET.10.2.590_1
Pages:
1459-1464
Abstract
Technology improvements have changed how crimes are solved, which has led to
more collaborative study into how criminals act. "Prophet," an additive model-based method
for predicting complicated, nonlinear time series data, such as crime actions, is presented. It
does a good job of capturing time trends like holiday and seasonal affects. Using Prophet along
with machine learning methods like Bayesian Regressor, Logistic Regression, Decision Tree,
Gradient Boosting, Random Forest, Voting Regressor, KNN, LSTM, and Neural Network
makes it more accurate at predicting crimes. With these tools, police can proactively decide how
to use their resources and stop crime, which means that neighborhoods will be better. This
essay shows how new technologies and models that are based on data are changing the way
crimes are solved, starting a new era of preventing crimes and keeping communities safe.