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Development of a Risk Assessment MathematicalModel to Evaluate Invasion Risk of Invasive AlienSpecies Using Interval Multivariate LinearRegression

机译:建立风险评估数学模型以使用区间多元线性回归评估外来物种的入侵风险

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Evaluation of risk of Invasive Alien Species (IAS) with uncertain and imprcise data is a challenging? task. In the present work, mathematical model for risk assessment is developed by using interval? multiple linear regression analysis in which mimic unceratin and imprecise data. Here both? dependent? and? independent? variables? are? interval-valued.12 invasive attributes selected as model parameters. Proposed a new method find the solution of design matrix using interval least square method. Here obtained a dataset of 28 invasive plant species which contains single-valued observations of 12 parameters and invasion risk scores which are obtained from National Risk Assessment. Using the dataset formed four interval input datasets. New method is proposed to find the estimates for interval regression coefficient using? interval least suqare method. The interval regression coefficents are estimated using four different? interval? input? data? set. The quality of the approximated model is evaluted by average accuracy? ratio? and? the models are validated using well known six invasive? and? four non? invasive? species.The approximated model gives average accuracy ratio of 0.730852 along with data set 3 which is the highest among all data sets. Validation results show that the expected risk score of each plant? species? from? National? Risk? Assessment? is within? the? approximated? risk? interval.Comparing the quality and the validation results, it is found that the approximated model along with data set 3 gives better predictions of risks of invasive alien species if its invasion is dominated by biological traits.
机译:用不确定和不精确的数据评估外来入侵物种(IAS)的风险具有挑战性吗?任务。在目前的工作中,通过使用区间?多元线性回归分析,其中模拟松果胶和不精确数据。都在这吗?依赖吗?和?独立?变量?是?间隔值。选择12种侵入性属性作为模型参数。提出了一种新的方法,采用区间最小二乘方法找到设计矩阵的解。此处获得了28种入侵植物物种的数据集,其中包含对12个参数的单值观测值和入侵风险分数,这些数据是从国家风险评估中获得的。使用数据集形成了四个区间输入数据集。提出了一种新的方法来寻找区间回归系数的估计值。区间最小Suqare方法。区间回归系数的估计使用四个不同?间隔?输入?数据?组。近似模型的质量由平均准确性评估吗?比?和?使用著名的六项侵入性验证模型?和?四无?侵入性的?近似模型给出的平均准确率为0.730852,同时数据集3的平均准确率最高。验证结果表明,每种植物的预期风险评分?种类?从?国民?风险?评定?在里面?那个?近似?风险?比较质量和验证结果,发现近似模型与数据集3可以更好地预测外来入侵物种的入侵,如果其入侵以生物学特性为主导。

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