The wisdom in tweetonomies: acquiring latent conceptual structures from social awareness streams

Claudia Wagner, M. Strohmaier
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引用次数: 51

Abstract

Although one might argue that little wisdom can be conveyed in messages of 140 characters or less, this paper sets out to explore whether the aggregation of messages in social awareness streams, such as Twitter, conveys meaningful information about a given domain. As a research community, we know little about the structural and semantic properties of such streams, and how they can be analyzed, characterized and used. This paper introduces a network-theoretic model of social awareness stream, a so-called "tweetonomy", together with a set of stream-based measures that allow researchers to systematically define and compare different stream aggregations. We apply the model and measures to a dataset acquired from Twitter to study emerging semantics in selected streams. The network-theoretic model and the corresponding measures introduced in this paper are relevant for researchers interested in information retrieval and ontology learning from social awareness streams. Our empirical findings demonstrate that different social awareness stream aggregations exhibit interesting differences, making them amenable for different applications.
推特分类中的智慧:从社会意识流中获取潜在的概念结构
尽管有人可能会争辩说,140个字符或更少的信息传达不了多少智慧,但本文开始探索社会意识流(如Twitter)中的信息聚合是否传达了有关给定领域的有意义的信息。作为一个研究团体,我们对这些流的结构和语义特性知之甚少,也不知道如何分析、表征和使用它们。本文介绍了一个社会意识流的网络理论模型,即所谓的“tweetonomy”,以及一套基于流的测量方法,使研究人员能够系统地定义和比较不同的流聚合。我们将模型和度量应用于从Twitter获取的数据集,以研究选定流中的新兴语义。本文提出的网络理论模型和相应的方法对研究社会意识流信息检索和本体学习的研究人员有一定的参考价值。我们的实证研究结果表明,不同的社会意识流聚合呈现出有趣的差异,使它们适用于不同的应用。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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