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COMPARISON OF STREAM INVERTEBRATE RESPONSE MODELS FOR BIOASSESSMENT METRICS

机译:生物评估指标流无脊椎动物响应模型的比较

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摘要

We aggregated invertebrate data from various sources to assemble data for modeling in two ecore-gions in Oregon and one in California. Our goal was to compare the performance of models developed using multiple linear regression (MLR) techniques with models developed using three relatively new techniques: classification and regression trees (CART), random forest (RF), and boosted regression trees (BRT). We used tolerance of taxa based on richness (RICHTOL) and ratio of observed to expected taxa (O/E) as response variables and land use/land cover as explanatory variables. Responses were generally linear; therefore, there was little improvement to the MLR models when compared to models using CART and RF. In general, the four modeling techniques (MLR, CART, RF, and BRT) consistently selected the same primary explanatory variables for each region. However, results from the BRT models showed significant improvement over the MLR models for each region; increases in R2 from 0.09 to 0.20. The O/E metric that was derived from models specifically calibrated for Oregon consistently had lower R2 values than RICHTOL for the two regions tested. Modeled O/E R~2 values were between 0.06 and 0.10 lower for each of the four modeling methods applied in the Willamette Valley and were between 0.19 and 0.36 points lower for the Blue Mountains. As a result, BRT models may indeed represent a good alternative to MLR for modeling species distribution relative to environmental variables.
机译:我们汇总了来自各种来源的无脊椎动物数据,以收集数据以在俄勒冈州的两个ecore-gion和加利福尼亚州的一个ecore-gion中进行建模。我们的目标是将使用多重线性回归(MLR)技术开发的模型与使用三种相对较新技术开发的模型的性能进行比较:分类和回归树(CART),随机森林(RF)和增强回归树(BRT)。我们将基于丰富度的分类单元的耐受性(RICHTOL)和观测到的预期分类单元的比率(O / E)作为响应变量,并将土地利用/土地覆盖率作为解释变量。响应通常是线性的;因此,与使用CART和RF的模型相比,MLR模型几乎没有改进。通常,四种建模技术(MLR,CART,RF和BRT)始终为每个区域选择相同的主要解释变量。但是,对于每个地区,BRT模型的结果均显示出比MLR模型有显着改善; R2从0.09增加到0.20。从针对俄勒冈州专门校准的模型中得出的O / E指标在两个测试区域的R2值始终低于RICHTOL。对于Willamette谷地采用的四种建模方法,每种模型的O / E R〜2值都降低了0.06至0.10之间,而对于蓝山,则降低了0.19至0.36点之间。结果,BRT模型确实可以替代MLR,以相对于环境变量对物种分布进行建模。

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