研究是如何进化的?模因循环研究的模式挖掘

Dan He, Xingquan Zhu, D. S. Parker
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引用次数: 5

摘要

近年来,人们对网络上的新闻表情包进行了大量关注,并对其人气的涨落进行了建模。新闻模因最重要的特征之一是它们很少重复出现,相反,它们倾向于转向不同但相似的模因。在这项工作中,我们考虑了研究模因的模式,这与新闻模因有很大不同,并且很少受到关注。研究模因与新闻模因的一个显著区别在于,研究模因具有循环发展的特点,因此需要建立研究模因循环模型。此外,这些周期可能揭示进化研究的重要模式,揭示研究如何进展。本文提出了研究模因周期的建模方法,并提出了在研究模因周期中识别周期和发现模式的解决方案。在两个不同领域应用的实验表明,我们的模型确实发现了有意义的模式,我们的模式发现算法对于大规模数据分析是有效的。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
How Does Research Evolve? Pattern Mining for Research Meme Cycles
Recent years have witnessed a great deal of attention in tracking news memes over the web, modeling shifts in the ebb and flow of their popularity. One of the most important features of news memes is that they seldom occur repeatedly, instead, they tend to shift to different but similar memes. In this work, we consider patterns in research memes, which differ significantly from news memes and have received very little attention. One significant difference between research memes and news memes lies in that research memes have cyclic development, motivating the need for models of cycles of research memes. Furthermore, these cycles may reveal important patterns of evolving research, shedding lights on how research progresses. In this paper, we formulate the modeling of the cycles of research memes, and propose solutions to the problem of identifying cycles and discovering patterns among these cycles. Experiments on two different domain applications indicate that our model does find meaningful patterns and our algorithms for pattern discovery are efficient for large scale data analysis.
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