...
首页> 外文期刊>Ecological Modelling >Random subset feature selection for ecological niche models of wildfire activity in Western North America
【24h】

Random subset feature selection for ecological niche models of wildfire activity in Western North America

机译:北美野火活动生态利基模型的随机子集特征选择

获取原文
获取原文并翻译 | 示例
   

获取外文期刊封面封底 >>

       

摘要

Variable selection in ecological niche modelling can influence model projections to a degree comparable to variations in future climate scenarios. Consequently, it is important to select feature (variable) subsets for optimizing model performance and characterizing variability. We utilize a novel random subset feature selection algorithm (RSFSA) for niche modelling to select an ensemble of optimally sized feature subsets of limited correlation (vertical bar r vertical bar 0.7) from 90 climatic, topographic and anthropogenic indices, generating wildfire activity models for western North America with higher performance. Monitoring Trends in Burn Severity and LANDFIRE wildfire data were used to develop thousands of MaxEnt, GLM and Glmnet models. The RSFSA-selected models performed better than random models, having higher accuracy (Area Under the Curve statistic; AUC), lower complexity (corrected Akaike Information Criterion; AICc), and, in some cases, lower overfitting (AUC(diff)). The RSFSA-selected MaxEnt quadratic/hinge (beta-regularization 2) feature models generally had higher AUC and lower AICc, outperforming other niche model parameterizations and methods. Feature subset ensembles of RSFSA-selected 15-variable MaxEnt quadratic/hinge models were used to characterize variability in projected areas of large wildfires for three burn severities under current, 2050, and 2070 climate scenarios. Expert screening of variables before RSFSA did not improve model performance. Widespread contemporary wildfire deficits and projected regional changes in wildfires highlight the need to manage fuel loads and restore natural fire regimes. The RSFSA is valuable for optimizing niche model performance and generating feature subset ensembles to characterize model variability across niche models of various feature subset sizes, modelling methods, and climate scenarios.
机译:生态利基造型中的可变选择可以影响模型预测到与未来气候情景的变化相当的程度。因此,重要的是选择要优化模型性能和表征变异性的特征(可变)子集。我们利用一种用于利基建模的新型随机子集特征选择算法(RSFSA),以选择来自90个气候,地形和人为指数的有限相关性的最佳尺寸特征子集的集合(垂直条R垂直条<0.7),产生野火活动模型西北美国表现较高。监测烧伤严重程度和Landfire野火数据的趋势用于开发成千上万的MaxEnt,GLM和GLMNet模型。 RSFSA的所选模型比随机模型更好,具有更高的精度(曲线统计的区域; AUC),复杂性较低(纠正的Akaike信息标准; AICC),并且在某些情况下,较低的过度装箱(AUC(Diff))。 RSFSA所选的MaxEnt二次/铰链(Beta-Ralaligation 2)特征模型通常具有更高的AUC和下部AICC,优于其他利基模型参数化和方法。 RSFSA所选的15变量最大二次/铰链模型的特征子集合集合用于在当前,2050和2070年气候情景下的三个烧伤句子的大型野火的预计区域的可变性。在RSFSA之前未提高模型性能之前的变量专家筛选。广泛的当代野火赤字和预计野火的区域变化突出了管理燃料负荷和恢复自然火灾制度的必要性。 RSFSA对于优化利基模型性能和生成特征子集合集合来说是有价值的,以表征各种特征子集尺寸,建模方法和气候情景的利基模型的模型变异性。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号