首页> 外国专利> USE OF MACHINE LEARNING TECHNIQUES FOR EXTRACTION OF ASSOCIATION RULES IN DATASETS OF PLANTS AND ANIMALS CONTAINING MOLECULAR GENETIC MARKERS ACCOMPANIED BY CLASSIFICATION OR PREDICTION USING FEATURES CREATED BY THESE ASSOCIATION RULES

USE OF MACHINE LEARNING TECHNIQUES FOR EXTRACTION OF ASSOCIATION RULES IN DATASETS OF PLANTS AND ANIMALS CONTAINING MOLECULAR GENETIC MARKERS ACCOMPANIED BY CLASSIFICATION OR PREDICTION USING FEATURES CREATED BY THESE ASSOCIATION RULES

机译:使用机器学习技术提取包含分子遗传标记的植物和动物数据集中的关联规则,并使用这些关联规则创建的特征进行分类或预测

摘要

FIELD: biotechnology.;SUBSTANCE: invention relates to method of prediction of presence of at least one target feature in plant. Plant genotype is determined by direct sequencing of DNA for at least one molecular genetic marker. Dataset containing set of variables is provided, wherein at least one of variables in dataset has value, presenting plant genotype (s) for molecular genetic marker(s). At least one rule of association of dataset is determined using one or more extraction algorithms of rules of association, wherein rule of association is a rule determining elements, which frequently appear together within dataset. Rule(s) of association is used to create one or more new variables for dataset. New variable(s) is added to dataset and used to predict presence of target features in plant.;EFFECT: technical result consists in increase of accuracy of predicting target features in plants.;41 cl, 4 tbl, 1 dwg
机译:发明领域:本发明涉及预测植物中至少一个靶特征的存在的方法。通过对至少一种分子遗传标记的DNA进行直接测序来确定植物基因型。提供了包含一组变量的数据集,其中数据集中的至少一个变量具有值,该值表示分子遗传标记的植物基因型。使用一种或多种关联规则的提取算法来确定数据集的关联的至少一个规则,其中关联规则是确定元素的规则,这些元素经常一起出现在数据集中。关联规则用于为数据集创建一个或多个新变量。新变量添加到数据集中并用于预测植物中目标特征的存在。效果:技术成果在于提高了预测植物中目标特征的准确性。41cl,4 tbl,1 dwg

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