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의사결정나무 기반 하천 유량 및 수질 예측모델의 성능 평가Performance Assessment of Decision Tree-Based Predictive Models for River Water Quantity and Quality

Other Titles
Performance Assessment of Decision Tree-Based Predictive Models for River Water Quantity and Quality
Authors
전기일조경철남건우기서진
Issue Date
Dec-2022
Publisher
한국환경기술학회
Keywords
Decision tree; Prediction models; River monitoring data; Important variables; Tree pruning; .
Citation
한국환경기술학회지, v.23, no.6, pp 307 - 312
Pages
6
Indexed
KCI
Journal Title
한국환경기술학회지
Volume
23
Number
6
Start Page
307
End Page
312
URI
https://scholarworks.gnu.ac.kr/handle/sw.gnu/30599
ISSN
1229-8425
2635-7437
Abstract
This study aimed to investigate the performance of decision tree-based models for water quantity and quality prediction. The models adopted for performance assessment included decision tree (DT), random forest (RF), and extreme gradient boosting (XGB), which was fed by the data sets collected from two monitoring stations in the Nakdong River during 2018–2021. A 7:3 ratio was used to prepare training and testing sets for three prediction models and their hyperparmeters were tuned to improve the accuracy of prediction. We found that XGB which was not sensitive to input data resolution outperformed the other two models, DT and RF. In contrast, the prediction error for DT model decreased progressively in response to increasing monitoring frequency from 7 through 3 to 1 day as well as after applying post-pruning, regardless of dependent variables. When the accuracy of prediction for RF model was assessed as a function of the number of independent variables, more than 4 variables was effective in maintaining its prediction performance as compared to all variables adopted. Therefore, both monitoring frequency and pruning play an important role in reducing the prediction error of decision tree models, in addition to hyperparameter optimization.
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건설환경공과대학 > 환경공학과 > Journal Articles
학과간협동과정 > 도시시스템공학과 > Journal Articles

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Ki, Seo Jin
건설환경공과대학 (환경공학과)
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