通过分析贡献之间的吸收来揭示聊天功能

D. Suthers, C. Desiato
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引用次数: 31

摘要

理解分布式学习和知识创造需要对局部活动以及这种局部活动如何在网络中产生更大的现象进行多层次的分析。由于数据的大小和交互的分布式特性,这种分析需要计算支持。本文报告了实现满足这些需求的分析框架的一个步骤。根据可自动化的规则计算并组合以推断贡献之间的摄取关系,偶然性被定义为证据上下文相关性的贡献之间观察到的关系。然后通过各种网络分析方法分析所得的摄取结构,并将其转换为行动者之间的摄取图,用于社会网络分析。我们的初步结果表明,基于时间因素、参与者寻址和词汇重叠的简单权变分析为识别讨论的主要特征和参与者的角色提供了足够质量的结构。随着语义分析的加入,结果有望得到改善。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Exposing Chat Features through Analysis of Uptake between Contributions
Understanding distributed learning and knowledge creation requires multi-level analysis of local activity and of how this local activity gives rise to larger phenomena in a network. Computational support is needed for such analyses due to the size of the data and distributed nature of interaction. This paper reports on one step towards implementing an analytic framework that addresses these needs. Contingencies, defined as observed relationships between contributions that evidence contextual relevance, are computed according to automatable rules, and combined to infer uptake relations between contributions. The resulting uptake structure is then analyzed through various network-analytic methods and is also transformed into a graph of uptake between actors for social network analysis. Our initial results show that a simple contingency analysis based on temporal factors, actor addressing, and lexical overlap provides structures of sufficient quality for identification of major features of a discussion and the roles of actors. The results are expected to improve as semantic analysis is added.
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