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Ensemble modeling approach for rainfall/groundwater balancing
Author(s) -
Daniele Laucelli,
Orazio Giustolisi,
Vladan Babovic,
Maarten Keijzer
Publication year - 2007
Publication title -
journal of hydroinformatics
Language(s) - English
Resource type - Journals
SCImago Journal Rank - 0.654
H-Index - 50
eISSN - 1465-1734
pISSN - 1464-7141
DOI - 10.2166/hydro.2007.102
Subject(s) - genetic programming , symbolic regression , variance (accounting) , computer science , ensemble forecasting , ensemble learning , simple (philosophy) , regression , machine learning , artificial intelligence , statistics , mathematics , philosophy , accounting , epistemology , business
This paper introduces an application of machine learning, on real data. It deals with Ensemble Modeling, a simple averaging method for obtaining more reliable approximations using symbolic regression. Considerations on the contribution of bias and variance to the total error, and ensemble methods to reduce errors due to variance, have been tackled together with a specific application of ensemble modeling to hydrological forecasts. This work provides empirical evidence that genetic programming can greatly benefit from this approach in forecasting and simulating physical phenomena. Further considerations have been taken into account, such as the influence of Genetic Programming parameter settings on the model's performance.

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