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Automated approaches to characterizing educational digital library usage: linking computational methods with qualitative analyses

机译:表征教育数字图书馆使用情况的自动化方法:将计算方法与定性分析联系起来

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The need for automatic methods capable of characterizing adoption and use has grown in operational digital libraries. This paper describes a computational method for producing two, inter-related, user typologies based on use diffusion. Furthermore, a case study is described that demonstrates the utility and applicability of the method: it is used to understand how middle and high school science teachers participating in an academic year-long field trial adopted and integrated digital library resources into their instructional planning and teaching. Use diffusion theory views technology adoption as a process that can lead to widely different patterns of use across a given population of potential users; these models use measures of frequency and variety to characterize and describe such usage patterns. By using computational techniques such as clickstream entropy and clustering, the method produces both coarse- and fine-grained user typologies. As a part of improving the initial coarse-grain typology, clickstream entropy improvements are described that aim at better separation of users. In addition, a fine-grained user typology is described that identifies five different types of teacher-users, including "interactive resource specialists" and "community seeker specialists." This typology was validated through comparison with qualitative and quantitative data collected using traditional educational field research methods. Results indicate that qualitative analyses correlate with the computational results, suggesting automatic methods may prove an important tool in discovering valid usage characteristics and user types.
机译:在运营数字图书馆中,越来越需要能够表征采用和使用特征的自动方法。本文介绍了一种基于使用扩散生成两种相互关联的用户类型的计算方法。此外,还描述了一个案例研究,证明了该方法的实用性和适用性:该案例研究用于了解参加一项为期一年的学术研究的初中和高中理科教师如何采用数字图书馆资源并将其整合到他们的教学计划和教学中。使用扩散理论将技术采用视为一个过程,可以在给定的潜在用户群体中导致广泛不同的使用模式;这些模型使用频率和多样性的度量来表征和描述此类使用模式。通过使用诸如点击流熵和聚类之类的计算技术,该方法可以生成粗粒度和细粒度的用户类型。作为改进初始粗粒度类型的一部分,描述了点击流熵改进,旨在更好地隔离用户。此外,还描述了一种细粒度的用户类型,该类型可识别五种不同类型的教师用户,包括“交互式资源专家”和“社区寻求者专家”。通过与使用传统教育现场研究方法收集的定性和定量数据进行比较,验证了这种类型。结果表明,定性分析与计算结果相关,表明自动方法可能证明是发现有效使用特征和用户类型的重要工具。

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