Luiz Rafael dos Santos Andrade, Ronaldo Nunes Linhares, A. Costa, Fernanda Santiago do Carmo Souza
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引用次数: 0
摘要
本文来自Tiradentes大学(Unit)与葡萄牙阿威罗大学(University of Aveiro)在2019年和2020年合作开展的教育研究生课程的研究。目的是描述在定性数据分析软件(QDAS)的支持下,如何在定性数据分析中表示数据的可视化(VD)。为了实现这一目标,我们达到了纳入/排除标准。目前常用的七个软件,试图了解QDAS中最常见的HV表示,它们的结构,以及它们如何在从少量到大量数据变化的场景中为组织和分析阶段做出贡献。结果表明,QDAS可以帮助研究人员通过在表格、图表、地图和运动表示中突出的数据可视化表示,透明地可视化分析的定性数据。在分析过程中,还观察到每个软件以不同的方式提供表示。用户/研究人员与生成的表示的交互类型一直是数字技术的专有现象,它从视觉上改善了科学生产知识如何更好地循环知识生产。
Data visualisation in software supporting qualitative analysis
This text results from research developed in the Postgraduate Program in Education at the Tiradentes University (Unit), in partnership with the University of Aveiro, Portugal, in 2019 and 2020. The objective sought to describe how the Visualization of Data (VD) is represented in the analysis of qualitative data with the support of Qualitative Data Analysis Software (QDAS). To achieve this objective, we reached the inclusion/exclusion criteria. Seven software frequently used today, trying to understand the most frequent representations of HV in QDAS, their structuring, and how they can contribute to the phases of organisation and analysis in a scenario that can vary from small to large amounts of data. The results show that the QDAS can help the researcher visualise the qualitative data analysed with transparency through data visualisation representations that stood out in tables, charts, maps, and representations with movements. During the analysis, it was also observed that each software offers representations in different ways. The type of user/researcher interaction with the generated representations has been an exclusive phenomenon of digital technologies, which visually improves how scientific production knowledge can better circulate knowledge production.