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Using Root Cause Data Analysis for Requirements and Knowledge Elicitation

机译:使用根本原因数据分析进行需求和知识启发

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The purpose of this paper is to present a technique, called Knowledge FMEA, for distilling textual raw data which is useful for requirements collection and knowledge elicitation. The authors first give some insights into the diverse characteristics of textual raw data which can lead to higher complexity in analysis and may result in some gaps in interpreting the interviewees' world view. We then outline a Knowledge FMEA procedure as it applies to qualitative data and its key benefits. Examples from a case study are presented to illustrate how to use the technique. Proposed Knowledge FMEA brings many advantages such as forcing the analysts to become deeply immersed in the raw data, identifying how the information is connected in causation, classifying the data according to why, what, how formulations and quantifying the findings for further quantitative analysis.
机译:本文的目的是提出一种称为知识FMEA的技术,用于提取文本原始数据,这对需求收集和知识启发非常有用。作者首先对文本原始数据的各种特征提供了一些见解,这些特征可能导致分析的复杂性更高,并可能导致在解释受访者的世界观方面出现一些差距。然后,我们概述了适用于定性数据及其主要优点的知识FMEA程序。提供了一个案例研究中的示例,以说明如何使用该技术。拟议的知识FMEA带来许多优势,例如迫使分析师深入研究原始数据,确定因果关系中信息的关联性,根据原因,内容,方式,对结果进行分类以及量化结果以进行进一步的定量分析。

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