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Sorting backbone analysis: A network-based method of extracting key actionable information from free-sorting task results

机译:排序骨干分析:从自由排序任务结果中提取关键可操作信息的基于网络的方法

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The free-sorting task is increasingly popular as a rapid sensory method to give a global picture of the similarities among samples. Sorting does not require training analysts, allows for the easy, simultaneous presentation of up to 20 samples, and provides stable results with 25-30 subjects. However, wide use of free-sorting is hindered by the current analyses for free sorting-for example DISTATIS and Correspondence Analysis-which require statistical expertise to conduct and interpret. In this paper a novel, alternative analysis is proposed, called "Sorting Backbone Analysis" (SBA), which is based on tools from network analysis. The similarity data produced from free sorting can represent a weighted network, and so a set of network-analysis tools can be used to identify groups of products which are significantly similar, and to visualize these results clearly and powerfully. SBA is simple and can be implemented with open-source software, provides interpretations that agree with current methods, and produces clear, powerful visualizations called "graphs," which may offer new, interpretable insights to sensory scientists. This paper describes the mathematical and statistical background for SBA and applies SBA to four, previously published sorting datasets, with comparisons to DISTATIS. In each case SBA produces visual results that highlight all of the same features as the standard approach while being easier to interpret, and in many cases produces new insights. Therefore, SBA specifically and network analysis in general are suggested as new approaches for use in the analysis of sensory similarity data as produced through free sorting and related methods.
机译:自由排序任务越来越受到一种快速的感官方法,以便在样本中的相似性的全局图像。排序不需要培训分析师,允许容易,同时呈现多达20个样本,并提供25-30个受试者的稳定结果。然而,通过对免费分拣的目前分析来阻碍自由排序的广泛使用 - 例如attatatis和对应分析 - 这需要进行统计专业知识来进行和解释。在本文中,提出了一种新颖的替代分析,称为“分类骨干分析”(SBA),其基于来自网络分析的工具。从自由排序产生的相似性数据可以代表加权网络,因此可以使用一组网络分析工具来识别显着相似的产品组,并且清晰且有力地可视化这些结果。 SBA很简单,可以用开源软件实现,提供了同意当前方法的解释,并产生典型的强大可视化,称为“图表”,可能为感官科学家提供新的,可解释的见解。本文介绍了SBA的数学和统计背景,并将SBA应用于四个先前发布的分类数据集,与Distatis进行比较。在每个案例中,SBA产生视觉结果,突出显示与标准方法相同的所有功能,同时更容易解释,并且在许多情况下产生新的见解。因此,SBA具体地和一般的网络分析被建议作为通过自由分拣和相关方法产生的感觉相似数据分析的新方法。

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