Predicting long-term population dynamics with bagging and boosting of process-based models

نویسندگان

  • Nikola Simidjievski
  • Ljupco Todorovski
  • Saso Dzeroski
چکیده

Process-based modeling is an approach to learning understandable, explanatory models of dynamic systems from domain knowledge and data. Although their utility has been proven on many tasks of modeling dynamic systems in various domains, their ability to accurately predict the future behavior of an observed system is limited. To address this limitation, we propose the use of a standard approach to improving the predictive performance of machine learning methods, i.e., the approach of learning ensemble models. Previous work on ensembles of process-based models has been limited to proof-of-principle experiments with a single ensemble method (bagging) and in the limited perspective of explaining the currently observed system behavior v.s. predicting future system behavior. In this paper, we design a general methodology for adapting ensemble methods to the context of process-based modeling. Using the methodology, we implement the two approaches bagging ∗Corresponding author’s phone: +386 1 477 3635 Email addresses: [email protected] (Nikola Simidjievski), [email protected] (Ljupčo Todorovski), [email protected] (Sašo Džeroski) Preprint submitted to Expert Systems with Applications July 17, 2015

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عنوان ژورنال:
  • Expert Syst. Appl.

دوره 42  شماره 

صفحات  -

تاریخ انتشار 2015