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Towards the use of genetic programming in the ecological modelling of mosquito population dynamics

机译:在蚊虫种群动态的生态建模中使用遗传编程

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摘要

Predictive algorithms are powerful tools to support infection surveillance plans based on the monitoring of vector abundance. In this article, we explore the use of genetic programming (GP) to build a predictive model of mosquito abundance based on environmental and climatic variables. We claim, in fact, that the heterogeneity and complexity of this kind of dataset demands algorithms capable of discovering complex relationships among variables. For this reason, we benchmarked GP performance with state of the art machine learning predictive algorithms. In order to provide a real exploitable model of mosquito abundance, we trained GP and the other algorithms on mosquito collections from 2002 to 2005 and we tested the predictive ability in 2006 collections. Results reveal that, among the studied methods, GP has the best performance in terms of accuracy and generalization ability. Moreover, the intrinsic feature selection and readability of the solution provided by GP offer the possibility of a biological interpretation of the model which highlights known or new behaviours responsible for mosquito abundance. GP, therefore, reveals to be a promising tool in the field of ecological modelling, opening the way to the use of a vector based GP approach (VE-GP) which may be more appropriate and beneficial for the problems in analysis.
机译:预测算法是基于对传染媒体的监测来支持感染监测计划的强大工具。在本文中,我们探索了基于环境和气候变量的遗传编程(GP)来构建蚊虫丰富的预测模型。事实上,我们要求这种数据集的异质性和复杂性需要能够在变量之间发现复杂关系的算法。因此,我们使用艺术机器学习预测算法的状态基准测试GP性能。为了提供真正的蚊子丰富模型,我们从2002年到2005年培训了GP和蚊子收集的其他算法,我们在2006年的收藏中测试了预测能力。结果表明,在研究的方法中,GP在准确性和泛化能力方面具有最佳性能。此外,GP提供的解决方案的内在特征选择和可读性提供了对模型的生物学解释的可能性,该模型突出了负责蚊子丰富的已知或新行为。因此,GP揭示了在生态建​​模领域的一个有前途的工具,开启了用于使用基于矢量的GP方法(VE-GP)的方式,这可能更适合并有利于分析中的问题。

著录项

  • 来源
    《Genetic programming and evolvable machines》 |2020年第4期|629-642|共14页
  • 作者单位

    DAMU - Data Analysis and Modeling Unit Department of Veterinary Sciences University of Torino Turin Italy;

    NOVA Information Management School (NOVA IMS) Universidade Nova de Lisboa Campus de Campolide 1070-312 Lisbon Portugal;

    Istituto per le Piante da Legno e l'Ambiente (IPLA) Regional Government-Owned Corporation of Regione Piemonte Turin Italy;

    DAMU - Data Analysis and Modeling Unit Department of Veterinary Sciences University of Torino Turin Italy;

    DAMU - Data Analysis and Modeling Unit Department of Veterinary Sciences University of Torino Turin Italy;

  • 收录信息
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

    Ecological modelling; Genetic programming; Machine learning; Regression;

    机译:生态建模;遗传编程;机器学习;回归;

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