Graphical Retrieval and Analysis of Temporal Information Systems (GRATIS): An Integrative Mixed Methodology and Open-Access Software to Analyze the (Non-)Linear Chronological Evolution of Information Embedded in Textual/Qualitative Data

IF 3.8 1区 社会学 Q1 SOCIAL SCIENCES, INTERDISCIPLINARY Journal of Mixed Methods Research Pub Date : 2023-04-18 DOI:10.1177/15586898231166968
Manuel S. González Canché
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Abstract

Like a video that reveals much more than a single photo, the incorporation of time to the analysis of qualitative evidence promotes contextualized understandings and allows research participants and readers to interactively review the processes and rationale that researchers followed to craft their findings and conclusions. However, mixed methods and qualitative methodologies available today forfeit the nuances gained by analyzing the chronological/temporal evolution of processes. We contribute to mixed methods research by introducing graphical retrieval and analysis of temporal information systems (GRATIS), a methodology (and open-access software) designed to visualize and analyze the time-based richness embedded in all qualitative/textual data. GRATIS employs dynamic network visualizations and data science mining/retrieval tools to combat the assumption that longitudinal studies require large timespans. We showcase how all qualitatively- or machine-learning-coded textual data may be analyzed with no extra feature engineering (i.e., data cleaning or preparation), rendering fully integrative/interactive outputs that strengthen the transparency of our findings and conclusions and open the “analytic black box” that characterizes most of mixed methods and qualitative studies to date. GRATIS contributes to democratizing data science by removing financial and computer programming barriers to benefit from data science applications. All data and software to replicate the analyses are provided with this submission.
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时间信息系统的图形检索和分析(GRATIS):一种综合混合方法和开放获取软件来分析嵌入在文本/定性数据中的信息(非)线性时间演变
就像一个视频,揭示了比一张照片更多的东西,将时间结合到定性证据的分析中,促进了情境化的理解,并允许研究参与者和读者互动地回顾研究人员遵循的过程和基本原理,以形成他们的发现和结论。然而,今天可用的混合方法和定性方法丧失了通过分析过程的时间/时间演变而获得的细微差别。我们通过引入时间信息系统的图形检索和分析(GRATIS)为混合方法研究做出了贡献,这是一种方法(和开放获取软件),旨在可视化和分析嵌入在所有定性/文本数据中的基于时间的丰富性。GRATIS采用动态网络可视化和数据科学挖掘/检索工具来对抗纵向研究需要大时间跨度的假设。我们展示了如何在没有额外特征工程(即数据清理或准备)的情况下分析所有定性或机器学习编码的文本数据,呈现完全集成/交互的输出,从而加强我们的发现和结论的透明度,并打开迄今为止大多数混合方法和定性研究的特征“分析黑匣子”。通过消除财务和计算机编程障碍,从数据科学应用中受益,GRATIS有助于数据科学的民主化。所有用于复制分析的数据和软件都随本报告一起提供。
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来源期刊
Journal of Mixed Methods Research
Journal of Mixed Methods Research SOCIAL SCIENCES, INTERDISCIPLINARY-
CiteScore
10.40
自引率
28.20%
发文量
36
期刊介绍: The Journal of Mixed Methods Research serves as a premiere outlet for ground-breaking and seminal work in the field of mixed methods research. Of primary importance will be building an international and multidisciplinary community of mixed methods researchers. The journal''s scope includes exploring a global terminology and nomenclature for mixed methods research, delineating where mixed methods research may be used most effectively, creating the paradigmatic and philosophical foundations for mixed methods research, illuminating design and procedure issues, and determining the logistics of conducting mixed methods research. JMMR invites articles from a wide variety of international perspectives, including academics and practitioners from psychology, sociology, education, evaluation, health sciences, geography, communication, management, family studies, marketing, social work, and other related disciplines across the social, behavioral, and human sciences.
期刊最新文献
Multi-Resolution Design: Using Qualitative and Quantitative Analyses to Recursively Zoom in and out of the Same Dataset In This Issue: Artificial Intelligence, Bridging Methodological Divides Through Mixed Methods, Literature Reviews, Integration of Structural Equation Modeling and Autoethnography, and Research Problems in Mixed Methods Media Review: The Sage Handbook of Mixed Methods Research Design In This Issue: Special Issue Dedicated to Michael D. Fetters Toward a Framework for Appraising the Quality of Integration in Mixed Methods Research
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