人类活动数据流中的探索性新颖性识别

A. Pozdnoukhov, F. Walsh
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引用次数: 8

摘要

异质的人工生成数据流为识别模式、检测新颖性和探索复杂社会系统的演变提供了机会。通讯技术对社会的渗透程度很高,可以作为特别丰富的信息来源。然而,对于各种可观察的通信渠道,人们很少或根本无法访问人与人之间通信的内容,而有关此类事件强度的数据流则更为常见。本文提出了一种有助于对此类数据流进行探索性分析和可视化的方法框架。特别是,我们展示了如何通过拟合非均匀马尔可夫调制泊松过程并通过热图将与异常活动爆发/间歇相对应的组件空间化来识别非典型活动水平。通过一个案例研究来说明这种方法,该案例研究致力于分析互联网上即时消息活动的地理参考数据流。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Exploratory novelty identification in human activity data streams
Heterogeneous human-generated data streams are the measurands which provide opportunities to identify patterns, detect novelties and explore evolution of complex social systems. Communication technologies with their very high penetration into society can serve as particularly rich sources of information. However, for a variety of observable communication channels one has little or no access to the content of human-to-human communications, while the data streams on the intensities of such events are more common. The paper presents a framework of methods useful for exploratory analysis and visualization of such data streams. Particularly, we demonstrate how untypical activity levels can be identified by fitting a non-homogeneous Markov-modulated Poisson process and spatialising the component corresponding to unusual bursts/lulls of activity via heat maps. This approach is illustrated with a case study devoted to the analysis of geo-referenced data streams of instant messaging activity on the internet.
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