提高个人层面网络跟踪的质量:现有方法面临的挑战与新内容和长尾敏感学术解决方案的介绍

IF 3 2区 社会学 Q2 COMPUTER SCIENCE, INTERDISCIPLINARY APPLICATIONS Social Science Computer Review Pub Date : 2024-10-16 DOI:10.1177/08944393241287793
Silke Adam, Mykola Makhortykh, Michaela Maier, Viktor Aigenseer, Aleksandra Urman, Teresa Gil Lopez, Clara Christner, Ernesto de León, Roberto Ulloa
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引用次数: 0

摘要

本文评估了社会科学中使用的个人级桌面网络跟踪的数据收集质量,并指出现有方法面临着抽样问题、因缺乏内容级数据而导致的有效性问题、对各种设备和长尾消费模式的忽视,以及透明度和隐私问题。为了克服其中的一些问题,文章介绍了一种新的学术网络跟踪解决方案--WebTrack,这是一种由欧洲主要研究机构 GESIS 维护的开源跟踪工具。文章讨论了 WebTrack 的设计逻辑、界面和后台要求,随后详细分析了该工具的优缺点。最后,文章利用 1 185 名参与者的数据,以实证的方式说明了通过 WebTrack 改进数据收集工作如何导致跟踪数据的使用发生创新性转变。由于 WebTrack 可以收集人们在传统新闻平台之外接触到的内容,因此,与依赖于来源层面分析的传统方法相比,WebTrack 可以通过自动内容分析大大提高跟踪数据中政治相关信息消费的检测能力。
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Improving the Quality of Individual-Level Web Tracking: Challenges of Existing Approaches and Introduction of a New Content and Long-Tail Sensitive Academic Solution
This article evaluates the quality of data collection in individual-level desktop web tracking used in the social sciences and shows that the existing approaches face sampling issues, validity issues due to the lack of content-level data and their disregard for the variety of devices and long-tail consumption patterns as well as transparency and privacy issues. To overcome some of these problems, the article introduces a new academic web tracking solution, WebTrack, an open-source tracking tool maintained by a major European research institution, GESIS. The design logic, the interfaces, and the backend requirements for WebTrack are discussed, followed by a detailed examination of the strengths and weaknesses of the tool. Finally, using data from 1,185 participants, the article empirically illustrates how an improvement in data collection through WebTrack leads to innovative shifts in the use of tracking data. As WebTrack allows for collecting the content people are exposed to beyond the classical news platforms, it can greatly improve the detection of politics-related information consumption in tracking data through automated content analysis compared to traditional approaches that rely on the source-level analysis.
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来源期刊
Social Science Computer Review
Social Science Computer Review 社会科学-计算机:跨学科应用
CiteScore
9.00
自引率
4.90%
发文量
95
审稿时长
>12 weeks
期刊介绍: Unique Scope Social Science Computer Review is an interdisciplinary journal covering social science instructional and research applications of computing, as well as societal impacts of informational technology. Topics included: artificial intelligence, business, computational social science theory, computer-assisted survey research, computer-based qualitative analysis, computer simulation, economic modeling, electronic modeling, electronic publishing, geographic information systems, instrumentation and research tools, public administration, social impacts of computing and telecommunications, software evaluation, world-wide web resources for social scientists. Interdisciplinary Nature Because the Uses and impacts of computing are interdisciplinary, so is Social Science Computer Review. The journal is of direct relevance to scholars and scientists in a wide variety of disciplines. In its pages you''ll find work in the following areas: sociology, anthropology, political science, economics, psychology, computer literacy, computer applications, and methodology.
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