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Complex data produce better characters

机译:复杂的数据产生更好的字符

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Two studies were conducted to explore the use of complex data in character description and hybrid identification. In order to determine if complex data allow the production of better characters, eight groups of plant systematists were given two classes of drawings of plant parts, and asked to divide them into character states ( clusters) in two separate experiments. The first class of drawings consisted only of cotyledons. The second class consisted of triplets of drawings: a cotyledon, seedling leaf, and inflorescence bract. The triplets were used to simulate complex data such as might be garnered by looking at a plant. Each experiment resulted in four characters ( groups of clusters), one for each group of systematists. Visual and statistical analysis of the data showed that the systematists were able to produce smaller, more precisely defined character states using the more complex drawings. The character states created with the complex drawings also were more consistent across systematists, and agreed more closely with an independent assessment of phylogeny. To investigate the utility of complex data in an applied task, four observers rated 250 hybrids of Dubautia ciliolata X arborea based on the overall form ( Gestalt) of the plants, and took measurements of a number of features of the same plants. A composite score of the measurements was created using principal components analysis. The correlation between the scores on the first principal component and the Gestalt ratings was computed. The Gestalt ratings and PC scores were significantly correlated, demonstrating that assessments of overall similarity can be as useful as more conventional approaches in determining the hybrid status of plants.
机译:进行了两项研究,以探索在字符描述和混合识别中使用复杂数据。为了确定复杂的数据是否可以产生更好的性状,向八组植物系统学家提供了两类植物部位图,并要求他们在两个单独的实验中将它们划分为性状(簇)。第一类图纸仅包括子叶。第二类包括三联图:子叶,幼苗叶和花序片。三元组用于模拟复杂的数据,例如可以通过查看植物获得的数据。每个实验产生四个字符(群集组),每组系统专家一个。数据的视觉和统计分析表明,系统专家可以使用更复杂的图形生成更小,更精确地定义的字符状态。使用复杂图形创建的字符状态在系统主义者之间也更加一致,并且与系统发育的独立评估更为一致。为了研究复杂数据在应用任务中的效用,四位观察员根据植物的总体形态(格式塔)对250株Dubautia ciliolata X arborea杂种进行了评级,并测量了同一植物的许多特征。使用主成分分析创建测量的综合评分。计算第一主要成分的分数与格式塔评级之间的相关性。格式塔评级和PC得分显着相关,表明总体相似性评估在确定植物的杂交状态方面可与更常规的方法一样有用。

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