将不平等可视化:迈向公平学生成果的一步。

IF 4.6 2区 教育学 Q1 EDUCATION, SCIENTIFIC DISCIPLINES Cbe-Life Sciences Education Pub Date : 2024-12-01 DOI:10.1187/cbe.24-02-0086
Sumitra Tatapudy, Rachel Potter, Linnea Bostrom, Anne Colgan, Casey J Self, Julia Smith, Shangmou Xu, Elli J Theobald
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引用次数: 0

摘要

低收入、第一代、性别少数、黑人、拉丁裔和土著学生在科学、技术、工程和数学 (STEM)领域的代表性不足和表现不佳的原因是多方面的,其中包括这些群体的学生在 STEM 课程中存在机会差距。打破持续存在的不公平现象的一个关键方法是实施不再系统性地使来自少数群体的学生处于不利地位的政策和做法。要做到这一点,教师必须利用数据反思来审视他们的课程成果。然而,这些数据可能很难获取、处理和可视化,从而使不平等的模式变得清晰可见。为了满足这一需求,我们开发了一个 R-Shiny 应用程序,允许经过认证的用户可视化学生成绩中的不平等现象。可在这里找到一个可探索的示例:https://theobaldlab.shinyapps.io/visualizinginequities/。在这篇文章中,我们使用公开检索的数据作为示例,详细说明:1)教师个人、教师群体和机构如何使用这一工具进行自我反思;2)如何调整代码以适应从本地来源检索的数据。所有代码均可在 https://github.com/TheobaldLab/VisualizingInequities 免费获取。我们希望教师、管理者和高等教育政策制定者能够看到大学课程中的机会差距,明确目标是通过自我反思、小组讨论和结构化支持来创造变革性的公平教育。
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Visualizing Inequities: A Step Toward Equitable Student Outcomes.

The underrepresentation and underperformance of low-income, first-generation, gender minoritized, Black, Latine, and Indigenous students in Science, Technology, Engineering, and Mathematics (STEM) occurs for a variety of reasons, including, that students in these groups experience opportunity gaps in STEM classes. A critical approach to disrupting persistent inequities is implementing policies and practices that no longer systematically disadvantage students from minoritized groups. To do this, instructors must use data-informed reflection to interrogate their course outcomes. However, these data can be hard to access, process, and visualize in ways that make patterns of inequities clear. To address this need, we developed an R-Shiny application that allows authenticated users to visualize inequities in student performance. An explorable example can be found here: https://theobaldlab.shinyapps.io/visualizinginequities/. In this essay, we use publicly retrieved data as an illustrative example to detail 1) how individual instructors, groups of instructors, and institutions might use this tool for guided self-reflection and 2) how to adapt the code to accommodate data retrieved from local sources. All of the code is freely available here: https://github.com/TheobaldLab/VisualizingInequities. We hope faculty, administrators, and higher-education policymakers will make visible the opportunity gaps in college courses, with the explicit goal of creating transformative, equitable education through self-reflection, group discussion, and structured support.

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来源期刊
Cbe-Life Sciences Education
Cbe-Life Sciences Education EDUCATION, SCIENTIFIC DISCIPLINES-
CiteScore
6.50
自引率
13.50%
发文量
100
审稿时长
>12 weeks
期刊介绍: CBE—Life Sciences Education (LSE), a free, online quarterly journal, is published by the American Society for Cell Biology (ASCB). The journal was launched in spring 2002 as Cell Biology Education—A Journal of Life Science Education. The ASCB changed the name of the journal in spring 2006 to better reflect the breadth of its readership and the scope of its submissions. LSE publishes peer-reviewed articles on life science education at the K–12, undergraduate, and graduate levels. The ASCB believes that learning in biology encompasses diverse fields, including math, chemistry, physics, engineering, computer science, and the interdisciplinary intersections of biology with these fields. Within biology, LSE focuses on how students are introduced to the study of life sciences, as well as approaches in cell biology, developmental biology, neuroscience, biochemistry, molecular biology, genetics, genomics, bioinformatics, and proteomics.
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