A unified framework for multi-level analysis of distributed learning

D. Suthers, Devan Rosen
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引用次数: 71

Abstract

Learning and knowledge creation is often distributed across multiple media and sites in networked environments. Traces of such activity may be fragmented across multiple logs and may not match analytic needs. As a result, the coherence of distributed interaction and emergent phenomena are analytically cloaked. Understanding distributed learning and knowledge creation requires multi-level analysis of the situated accomplishments of individuals and small groups and of how this local activity gives rise to larger phenomena in a network. We have developed an abstract transcript representation that provides a unified analytic artifact of distributed activity, and an analytic hierarchy that supports multiple levels of analysis. Log files are abstracted to directed graphs that record observed relationships (contingencies) between events, which may be interpreted as evidence of interaction and other influences between actors. Contingency graphs are further abstracted to two-mode directed graphs that record how associations between actors are mediated by digital artifacts and summarize sequential patterns of interaction. Transitive closure of these associograms creates sociograms, to which existing network analytic techniques may be applied, yielding aggregate results that can then be interpreted by reference to the other levels of analysis. We discuss how the analytic hierarchy bridges between levels of analysis and theory.
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分布式学习多层次分析的统一框架
在网络环境中,学习和知识创造通常分布在多个媒体和站点上。此类活动的痕迹可能分散在多个日志中,可能与分析需求不匹配。因此,分布式相互作用和涌现现象的一致性在分析上被掩盖了。要理解分布式学习和知识创造,需要对个人和小团体所处的成就进行多层次的分析,并分析这种局部活动如何在网络中产生更大的现象。我们已经开发了一种抽象的转录表示,它提供了分布式活动的统一分析工件,以及支持多级分析的分析层次。日志文件被抽象为记录事件之间观察到的关系(偶然性)的有向图,这可能被解释为参与者之间的交互和其他影响的证据。偶然性图进一步抽象为双模式有向图,记录了参与者之间的关联是如何通过数字工件调解的,并总结了交互的顺序模式。这些关联图的传递闭包创建了社会图,现有的网络分析技术可以应用于社会图,产生聚合结果,然后可以通过参考其他分析级别来解释。我们讨论了分析层次如何在分析和理论的层次之间架起桥梁。
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