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Comparing Ensembles Of Decision Trees And Neural Networks For One-day-ahead Stream Flow Predict
- Source :
- Science Park. 1:1-12
- Publication Year :
- 2013
- Publisher :
- Laxmi Book Publication, 2013.
-
Abstract
- Ensemble learning methods have received remarkable attention in the recent years and led to considerable advancement in the performance of the regression and classification problems. Bagging and boosting are among the most popular ensemble learning techniques proposed to reduce the prediction error of learning machines. In this study, bagging and gradient boosting algorithms are incorporated into the model creation process for daily streamflow prediction. This paper compares two tree-based ensembles (bagged regression trees BRT & gradient boosted regression trees GBRT) and two artificial neural networks ensembles (bagged artificial neural networks BANN & gradient boosted artificial neural networks GBANN). Proposed ensembles are benchmarked to a conventional ANN (multilayer perceptron MLP). Coefficient of determination, mean absolute error and the root mean squared error measures are used for prediction performance evaluation. The results obtained in this study indicate that ensemble learning models yield better prediction accuracy than a conventional ANN model. Moreover, ANN ensembles are superior to tree-based ensembles.
- Subjects :
- Boosting (machine learning)
Artificial neural network
Mean squared error
business.industry
Computer science
Computer Science::Neural and Evolutionary Computation
Decision tree
Pattern recognition
Machine learning
computer.software_genre
Ensemble learning
Regression
Multilayer perceptron
General Earth and Planetary Sciences
Artificial intelligence
Gradient boosting
business
computer
General Environmental Science
Subjects
Details
- ISSN :
- 23218045
- Volume :
- 1
- Database :
- OpenAIRE
- Journal :
- Science Park
- Accession number :
- edsair.doi...........a099122107aaf35c47b1c33d7d65fd6d
- Full Text :
- https://doi.org/10.9780/23218045/1172013/41