使用谷歌搜索趋势来估计全球学习模式

S. Arslan, Mo Tiwari, C. Piech
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引用次数: 4

摘要

使用互联网进行学习提供了一个独特的、不断增长的机会,可以重新审视量化世界各地不同地区人们对某一特定主题的了解程度这一任务。仅谷歌每天就接收超过50亿次搜索,其公开可用的数据提供了对学习过程的洞察,否则在全球范围内是无法观察到的。在本文中,我们介绍了通过搜索的计算机科学素养代理指数(csi -s),这是一种利用在线搜索数据对计算机科学教育趋势做出有根据猜测的措施。该方法使用统计信号处理技术,将来自一系列主题的搜索量组合成一个连贯的分数。我们有意探索和减轻搜索数据的偏差,并在此过程中,开发与传统的,更昂贵的学习指标相关的csi -s分数。然后,我们使用搜索趋势数据来衡量不同国家和不同时期的学科素养模式。据我们所知,这是第一个通过互联网搜索趋势来衡量学习的方法。互联网正在成为学习者的标准工具,因此,我们预计搜索趋势数据将越来越多地与学习科学社区相关。
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Using Google Search Trends to Estimate Global Patterns in Learning
The use of the Internet for learning provides a unique and growing opportunity to revisit the task of quantifying how much people have learned about a given subject in different regions around the world. Google alone receives over 5 billion searches a day and its publicly available data provides insight into learning process that is otherwise unobservable on a global scale. In this paper we, introduce the Computer Science Literacy-Proxy Index via Search (CSLI-s), a measure that utilizes online search data to make an educated guess around trends in computer science education. This measure uses a statistical signal processing technique to compose search volumes from a spectrum of topics into a coherent score. We intentionally explore and mitigate the biases of search data and, in the process, develop CSLI-s scores that correlate with traditional, more expensive metrics of learning. We then use search-trend data to measure patterns in subject literacy across countries and over time. To the best of our knowledge, this is the first measure of learning via Internet search-trends. The Internet is becoming a standard tool for learners and, as such, we anticipate search-trend data will have growing relevance to the learning science community.
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Trust, Sustainability and [email protected] L@S'22: Ninth ACM Conference on Learning @ Scale, New York City, NY, USA, June 1 - 3, 2022 L@S'21: Eighth ACM Conference on Learning @ Scale, Virtual Event, Germany, June 22-25, 2021 Leveraging Book Indexes for Automatic Extraction of Concepts in MOOCs Evaluating Bayesian Knowledge Tracing for Estimating Learner Proficiency and Guiding Learner Behavior
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