Taking count: A computational analysis of data resources on academic LibGuides

IASSIST quarterly Pub Date : 2023-06-30 DOI:10.29173/iq1040
C. Hennesy, Alicia Kubas, J. McBurney
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Abstract

The LibGuides platform is a ubiquitous tool in academic libraries and is commonly used by librarians to compile and share lists of recommended social science numerical data resources with users. This study leverages the machine-accessible nature of the LibGuides platform to collect links to data and statistical resources from over 10,000 LibGuide pages at 123 R1 research institutions. After substantial data cleaning and normalization, an analysis of the most common resources on those guides provides a unique window into the data repositories, libraries, archives, statistical data platforms, and other machine-readable data sources that are most popular on academic library guides. Results show that freely available resources from U.S. government agencies are among the most common to be included on data and statistical resources guides across institutions. Resources requiring paid licenses or memberships for full access, such as Statistical Insight (ProQuest), Social Explorer, and ICPSR are linked to most frequently overall, regardless of the percentage of institutions that include them. Findings also suggest that libraries are more likely to share traditional licensed statistical resources (e.g., Cambridge’s Historical Statistics of the United States) and collections of simple charts and graphs (e.g., Statista) than more robust and complex microdata resources (e.g., IPUMS).
计数:学术版LibGuides数据资源的计算分析
LibGuides平台是学术图书馆中无处不在的工具,图书馆员通常使用它来编制推荐的社会科学数字数据资源列表,并与用户共享。这项研究利用LibGuides平台的机器可访问性,从123家R1研究机构的10000多个LibGuide页面中收集数据和统计资源的链接。经过大量的数据清理和规范化,对这些指南上最常见资源的分析为了解学术图书馆指南上最受欢迎的数据存储库、图书馆、档案馆、统计数据平台和其他机器可读数据源提供了一个独特的窗口。结果显示,来自美国政府机构的免费资源是各机构数据和统计资源指南中最常见的资源之一。需要付费许可证或会员资格才能完全访问的资源,如Statistical Insight(ProQuest)、Social Explorer和ICPSR,总体上与之关联最频繁,无论包含这些资源的机构的百分比如何。研究结果还表明,与更强大和复杂的微观数据资源(如IPUMS)相比,图书馆更有可能共享传统的许可统计资源(如美国剑桥历史统计)和简单图表集(如Statista)。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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