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Comparison of logistic regression and machine learning techniques in prediction of habitat distribution of plant species

机译:逻辑回归和机器学习技术在植物物种栖息地分布预测中的比较

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摘要

The study was carried out to compare performance of Logistic regression (LR) and machine learning techniques to predict habitat distribution of plant species in rangelands of Qom Province, Iran. After determination of homogeneous units, vegetation sampling was carried out using random systematic method. The plot size was determined using minimal area method from 2 to 25 m(2). For soil sampling, at each habitat, eight holes were drilled and samples were taken from 0-30 and 30-80 depths. Soil characteristics consisting gravel percent, texture, saturation moisture, available water, lime, gypsum, organic matter, acidity (pH), electrical conductivity (EC) were measured by standard methods. Using geostatistical and kriging interpolation method with the same spatial resolution soil digital layers were prepared and stored in GIS. Digital elevation map of the region was used for mapping slope, aspect and elevation. After implementation of the models, to evaluate and predict the actual maps conformity, Kappa coefficient and true skill statistic (TSS)were measured. The results showed that the highest values of kappa and TSS belong to the ANN (kappa=0.81, TSS=0.8), MaxEnt (kappa=0.79. TSS=0.57) and LR models (kappa=0.63, TSS=0.55), respectively. Based on these results, it can be said that there is a strong relationship between model performance and the kinds of species distributions being modeled. Some methods performed generally better, but no method was superior in all circumstances.
机译:该研究旨在比较Logistic回归(LR)和机器学习技术的性能,以预测伊朗库姆省牧场中植物物种的栖息地分布。确定均质单位后,使用随机系统方法进行植被采样。使用最小面积方法从2到25 m(2)确定地块大小。为了进行土壤采样,在每个栖息地钻了8个孔,并从0-30和30-80的深度取样。用标准方法测量土壤特征,包括砾石百分比,质地,饱和水分,可用水,石灰,石膏,有机质,酸度(pH),电导率(EC)。使用具有相同空间分辨率的地统计和克里格插值方法,准备了土壤数字层并将其存储在GIS中。该区域的数字高程图用于绘制坡度,高程和高程。模型实施后,为了评估和预测实际地图的符合性,测量了Kappa系数和真实技能统计(TSS)。结果表明,kappa和TSS的最大值分别属于ANN(kappa = 0.81,TSS = 0.8),MaxEnt(kappa = 0.79。TSS = 0.57)和LR模型(kappa = 0.63,TSS = 0.55)。基于这些结果,可以说在模型性能和被建模的物种分布的种类之间有很强的关系。有些方法通常效果更好,但在所有情况下都没有一种方法是更好的。

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