首页> 外文OA文献 >Application of genetic algorithm (GA) to select input variables in support vector machine (SVM) for analyzing the occurrence of roach, Rutilus rutilus, in streams
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Application of genetic algorithm (GA) to select input variables in support vector machine (SVM) for analyzing the occurrence of roach, Rutilus rutilus, in streams

机译:遗传算法(GA)在支持向量机(SVM)中选择输入变量以分析流中蟑螂Rutilus rut​​ilus的发生的应用

摘要

Support vector machine (SVM) was used to analyze the occurrence of roach in Flemish stream basins (Belgium). Several habitat and physico–chemical variables were used as inputs for the model development. The biotic variable merely consisted of abundance data which was used for predicting presence/absence of roach. Genetic algorithm (GA) was combined with SVM in order to select the most important predictors for assessing the presence/absence of roach in the sampling sites. Before and after variable selection, the SVM were evaluated and compared by two predictive performances namely the percentage of Correctly Classified Instances (CCI %) and Cohen's kappa statistics (k). The obtained results showed that before variable selection, the SVM yielded a reliable performance but the prediction further improved after the combination of SVM with GA. According to the attribute weights, the habitat variables were more responsible than physico–chemical ones in assessing the presence/absence of fish in the streams. GA also presented that roach are more dependent on the habitat variables rather than on water quality ones. Though after variable selection the predictive performances increased, the attribute weights of SVM could be an alternative substitute for GA since all input variables can be evaluated in terms of their weight.
机译:支持向量机(SVM)用于分析佛兰芒流域(比利时)中蟑螂的发生。一些生境和理化变量被用作模型开发的输入。生物变量仅由用于预测蟑螂是否存在的丰度数据组成。遗传算法(GA)与SVM结合使用,以选择最重要的预测因子来评估采样点中蟑螂的存在与否。在变量选择之前和之后,对SVM进行了评估,并通过两种预测性能进行了比较,即正确分类实例的百分比(CCI%)和科恩的kappa统计量(k)。获得的结果表明,在变量选择之前,SVM产生了可靠的性能,但是将SVM与GA结合使用后,预测进一步改善。根据属性权重,在评估溪流中鱼类是否存在时,栖息地变量比物理化学变量更负责任。遗传算法还提出,蟑螂更多地取决于栖息地变量,而不是水质变量。尽管在选择变量之后,预测性能有所提高,但是SVM的属性权重可以替代GA,因为可以根据权重来评估所有输入变量。

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