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Evaluation of machine learning methods for predicting eradication of aquatic invasive species

机译:用于预测水生侵入物种根除的机器学习方法的评价

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In the work, we evaluate the performance of machine learning approaches for predicting successful eradication of aquatic invasive species (AIS) and assess the extent to which eradication of an invasive species depends on the certain specified ecological features of the target ecosystem and/or features that characterize the planned intervention. We studied the outcomes of 143 planned attempts for eradicating AIS, where each attempt was described by ecological and eradication-strategy-related features of the target ecosystem. We considered several machine learning approaches to determine whether one could produce a classifier that accurately predicts weather an invasive species will be eradicated. To assess each learner's performance, we examined its tenfold cross-validated prediction accuracy as well as the false positive rate, the F-measure, and the Area Under the ROC Curve. We also used Kaplan-Meier survival analysis to determine which features are relevant to predicting the time required for each eradication program. Across the five typical machine learning approaches, our analysis suggests that learners trained by the decision tree work well, and have the best performance. In particular, by examining the trained decision tree model, we found that if an occupied area was not large and/or containments of AIS dispersal were employed, the eradication of AIS was likely to be successful. We also trained decision tree models over only the ecological features and found that their performances were comparable with that of models trained using all features. As our trained decision tree models are accurate, decision makers can use them to estimate the result of the proposed actions before they commit to which specific strategy should be applied.
机译:在工作中,我们评估机器学习方法的表现,以预测成功消除水生侵入物种(AIS),并评估消除侵入物种的程度取决于目标生态系统和/或特征的某些特定的生态特征表征计划干预。我们研究了143次努力消除AIS试图的结果,其中每次尝试都是通过目标生态系统的生态和根除战略相关特征描述的。我们考虑了几种机器学习方法,以确定一个人是否可以产生准确预测天气的分类器,将根除侵入性物种。为了评估每个学习者的性能,我们检查了其十倍交叉验证的预测精度以及ROC曲线下的假阳性率,F测量和区域。我们还使用了Kaplan-Meier生存分析来确定哪些功能与预测每个根除程序所需的时间相关。在五个典型的机器学习方法中,我们的分析表明,学习者被决策树训练得好,并且具有最佳性能。特别地,通过检查训练有素的决策树模型,我们发现如果占用面积不大并且/或使用AIS分散的遏制,则消除AIS可能是成功的。我们还仅在生态特征上培训了决策树模型,并发现其性能与使用所有功能培训的模型相当。由于我们培训的决策树模型是准确的,决策者可以使用它们来估计应在承诺应申请具体策略之前估算所提出的行动的结果。

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