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A Data-Driven Approach to Development of a Taxonomy Framework for Triple Bottom Line Metrics

机译:一种数据驱动的三分类框架三重底线度量框架的方法

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摘要

This paper proposes a data-driven approach to develop a taxonomy in a data structure on list for triple bottom line (TBL) metrics. The approach is built from the authors reflection on the subject and review of the literature about TBL. The envisaged taxonomy framework grid to be developed through this approach will enable existing metrics to be classified, grouped, and standardized, as well as detect the need for further metrics development in uncovered domains and applications. The approach reported aims at developing a taxonomy structure that can be seen as a bi-dimensional table focusing on feature interrogations and characterizing answers, which will be the basis on which the taxonomy can then be developed. The interrogations column is designed as the stack of the TBL metrics features: What type of metric is it (qualitative, quantitative, or hybrid)? What is the level of complexity of the problems where it is used? What standards does it follow? How is the measurement made, and what are the techniques that it uses? In what kinds of problems, subjects, and domains is the metric used? How is the metric validated? What is the method used in its calculation? The column of characterizing answers results from a categorization of the range of types of answers to the feature interrogations. The approach reported in this paper is based on a screening tool that searches and analyzes information both within abstracts and full-text journal papers. The vision for this future taxonomy is that it will enable locating for any specific context, discern what TBL metrics are used in that context or similar contexts, or whether there is a lack of developed metrics. This meta knowledge will enable a conscious decision to be made between creating a new metric or using one of those that already exists. In this latter case, it would also make it possible to choose, among several metrics, the one that is most appropriate to the context at hand. In addition, this future framework will ease new future literature revisions, when these are viewed as updates of this envisaged taxonomy. This would allow creating a dynamic taxonomy for TBL metrics. This paper presents a computational approach to develop such taxonomy, and reports on the initial steps taken in that direction, by creating a taxonomy framework grid with a computational approach.
机译:本文提出了一种数据驱动方法,在三重底线(TBL)度量标准的列表中在数据结构中开发分类方法。该方法是由作者构建的关于TBL关于文献的对象的思考和审查。通过这种方法开发的设想的分类框架网格将使现有的指标能够分类,分组和标准化,以及检测未覆盖的域和应用中进一步的指标开发的需要。该方法报告旨在开发一种分类结构,可以被视为专注于特征审讯和表征答案的双维表,这将是可以开发分类物的基础。询问列被设计为TBL度量特征的堆栈:它是什么类型的度量(定性,定量或混合)?它使用的问题的复杂程度是多少?它遵循什么标准?如何进行测量,它使用的技术是什么?在哪些问题,主题和域名是使用的尺寸?度量标准如何验证?它计算中使用的方法是什么?特征答案的列是由对特征审讯的答案类型的分类进行分类。本文报告的方法基于筛选工具,可在摘要和全文期刊论文中搜索和分析信息。这个未来分类的愿景是它将能够找到任何特定的上下文,辨别在该上下文或类似上下文中使用TBL度量,或者是否存在缺乏发达的指标。这种元知识将在创建新的度量标准或使用已经存在的那些中,实现有意识地决定。在后一种情况下,它还可以在几个度量标准中选择最适合于手头上下文的一个。此外,此未来的框架将缓解新的未来文献修订,当这些被视为这种设想的分类系统的更新时。这将允许为TBL度量创建一个动态分类。本文介绍了制定这种分类法的计算方法,并通过以计算方法创建分类框架网格来报告以该方向采取的初始步骤。

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