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Optimization of morphological data in numerical taxonomy analysis using genetic algorithms feature selection method

机译:基于遗传算法特征选择方法的数字分类学形态数据优化

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摘要

Studies in Numerical Taxonomy are carried out by measuring characters as much as possible. The workload over scientists and labor to perform measurements will increase proportionally with the number of variables (or characters) to be used in the study. However, some part of the data may be irrelevant or sometimes meaningless. Here in this study, we introduce an algorithm to obtain a subset of data with minimum characters that can represent original data. Morphological characters were used in optimization of data by Genetic Algorithms Feature Selection method. The analyses were performed on an 18 character*11 taxa data matrix with standardized continuous characters. The analyses resulted in a minimum set of 2 characters, which means the original tree based on the complete data can also be constructed by those two characters.
机译:数值分类学的研究是通过尽可能地测量字符来进行的。科学家和执行测量工作的工作量将与研究中使用的变量(或特征)的数量成比例地增加。但是,数据的某些部分可能无关紧要,有时甚至毫无意义。在本研究中,我们介绍一种算法,以获取具有可表示原始数据的最小字符的数据子集。通过遗传算法特征选择方法将形态特征用于数据优化。在具有18个字符* 11个具有标准化连续字符的分类单元数据矩阵上进行了分析。分析结果至少需要2个字符集,这意味着基于完整数据的原始树也可以由这两个字符构成。

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