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Total ranking models by the genetic algorithm variable subset selection (GA-VSS) approach for environmental priority settings

机译:用于环境优先级设置的遗传算法变量子集选择(GA-VSS)方法的总排名模型

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摘要

Total order ranking (TOR) strategies, which are mathematically based on elementary methods of discrete mathematics, seem to be attractive and simple tools for performing data analysis. Moreover order-ranking strategies seem to be a very useful tool not only to perform data exploration but also to develop order ranking models, a possible alternative to conventional quantitative structure-activity relationship (QSAR) methods. In fact, when data material is characterised by uncertainties, order methods can be used as alternative to statistical methods such as multilinear regression (MLR), because they do not require specific functional relationships between the independent and dependent variables (responses). A ranking model is a relationship between a set of dependent attributes, experimentally investigated, and a set of independent attributes, i.e. model attributes, which are calculated attributes. As in regression and classification models, the variable selection model is one of the main steps in finding predictive models. In this work the genetic algorithm-variable subset selection (GA-VSS) approach is proposed as the variable selection method for searching for the best ranking models within a wide set of variables. The models based on the selected subsets of variables are compared with the experimental ranking and evaluated by the Spearman's rank index. A case study application is presented on a TOR model developed for polychlorinated biphenyl (PCB) compounds, which have been analysed according to some of their physicochemical properties which play an important role in their environmental impact.
机译:在数学上基于离散数学的基本方法的总订单排名(TOR)策略似乎是进行数据分析的有吸引力且简单的工具。此外,订单排序策略似乎是非常有用的工具,不仅可以执行数据探索,而且可以开发订单排序模型,这可以替代常规的定量结构-活动关系(QSAR)方法。实际上,当数据资料具有不确定性时,可以使用排序方法来替代统计方法,例如多线性回归(MLR),因为它们不需要自变量和因变量(响应)之间的特定功能关系。排序模型是一组经过实验研究的依存属性与一组独立属性(即模型属性)之间的关系,这些属性是计算出的属性。与回归模型和分类模型一样,变量选择模型是查找预测模型的主要步骤之一。在这项工作中,提出了遗传算法-变量子集选择(GA-VSS)方法,作为在广泛的变量集中搜索最佳排名模型的变量选择方法。将基于所选变量子集的模型与实验排名进行比较,并通过Spearman排名指数进行评估。在针对多氯联苯(PCB)化合物开发的TOR模型上提供了一个案例研究应用程序,该模型已根据其某些理化特性进行了分析,这些特性在其对环境的影响中起着重要作用。

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