利用社会学模型进行预测II:复杂传染病的早期预警

R. Colbaugh, K. Glass
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引用次数: 6

摘要

人们对开发预测人类行为的技术非常感兴趣,而解决这个问题的一个有前途的方法是收集与现象相关的经验数据,然后将机器学习方法应用于这些数据以形成预测。这篇由两部分组成的论文表明,这种学习算法的性能通常可以通过在其开发和实施中利用社会学模型来大幅提高。在本文(两部分中的第二部分)中,我们证明了基于社会学的学习算法在预测新生社会扩散事件是否会“病毒式传播”的任务方面优于金标准方法。值得注意的是,即使只有有限的时间序列数据可供分析,该算法也表现良好。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Leveraging sociological models for prediction II: Early warning for complex contagions
There is considerable interest in developing techniques for predicting human behavior, and a promising approach to this problem is to collect phenomenon-relevant empirical data and then apply machine learning methods to these data to form predictions. This two-part paper shows that the performance of such learning algorithms often can be improved substantially by leveraging sociological models in their development and implementation. In this paper, the second of the two parts, we demonstrate that a sociologically-grounded learning algorithm outperforms a gold-standard method for the task of predicting whether nascent social diffusion events will “go viral”. Significantly, the proposed algorithm performs well even when there is only limited time series data available for analysis.
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