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XGBOOST HYPERPARAMETER OPTIMIZATION USING RANDOMIZEDSEARCHCV FOR ACCURATE FOREST FIRE DROUGHT CONDITION PREDICTION

Authors :
Nur Alamsyah
Budiman Budiman
Titan Parama Yoga
R Yadi Rakhman Alamsyah
Source :
Pilar Nusa Mandiri, Vol 20, Iss 2, Pp 103-110 (2024)
Publication Year :
2024
Publisher :
LPPM Nusa Mandiri, 2024.

Abstract

Climate change and increasing global temperatures have increased the frequency and intensity of forest fires, making fire risk evaluation increasingly important. This study aims to improve the accuracy of predicting forest fuel drought conditions (Drought Code) by using the XGBoost algorithm optimized with RandomizedSearchCV. The research methods include collecting data related to forest fires, preprocessing data to ensure quality and consistency, and using RandomizedSearchCV for XGBoost hyperparameter optimization. The results showed that the optimized XGBoost model resulted in a decrease in Mean Squared Error (MSE) and an increase in R-squared value compared to the default model. The optimized model achieved an MSE of 0.0210 and R2 of 0.9820 on the test data, indicating significantly improved prediction accuracy for forest fuel drought conditions. These findings emphasize the importance of hyperparameter optimization in improving the accuracy of predictive models for forest fire risk assessment.

Details

Language :
English, Indonesian
ISSN :
19781946 and 25276514
Volume :
20
Issue :
2
Database :
Directory of Open Access Journals
Journal :
Pilar Nusa Mandiri
Publication Type :
Academic Journal
Accession number :
edsdoj.44802a6a7dcf4196b6d60e99fecf3252
Document Type :
article
Full Text :
https://doi.org/10.33480/pilar.v20i2.5569