时空模型融合:社会动荡的多尺度建模

Spatiotemporal Model Fusion: Multiscale Modelling of Civil Unrest

Journal of the Royal Statistical Society. Series C: Applied Statistics · 2016
被引 10
ABS 3

中文导读

提出一种多尺度时空模型,融合社交媒体等异构数据源来预测社会动荡,满足可扩展、分层预测、处理不确定性及灵活更新等需求。

Abstract

Summary Civil unrest is a complicated, multifaceted social phenomenon that is difficult to forecast. Relevant data for predicting future protests consist of a massive set of heterogeneous sources of data, primarily from social media. Using a modular approach to extract pertinent information from disparate sources of data, we develop a spatiotemporal multiscale framework to fuse predictions from algorithms mining social media. This novel multiscale spatiotemporal model is developed to satisfy four essential requirements: be scalable to handle massive spatiotemporal data sets, incorporate hierarchical predictions, accommodate predictions of differing quality and uncertainty, and be flexible, allowing revisions to existing algorithms and the addition of new algorithms. The paper details the challenges that are posed by these four requirements and outlines the benefits of our novel multiscale spatiotemporal model relative to existing methods. In particular, our multiscale approach coupled with an efficient sequential Monte Carlo framework enables scalable rapid computation of richly specified Bayesian hierarchical models for spatiotemporal data.

计算机科学数据挖掘机器学习社会计算贝叶斯统计