基于多维时间序列模型的社会保障事件相关性挖掘与预测

Xiaotong Chi, Yueheng Sun, Wenjun Wang, Kuiyu Ma
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引用次数: 2

摘要

近年来,社会治安事件频发,给人民群众的生命财产造成了严重损失。本文以大规模在线时间序列数据为基础,利用多维时间序列模型挖掘事件触发因素,定量分析其与社会保障事件的相关性。此外,还提出了一种情景主导的相似度度量方法来计算事件发展趋势的相似度。通过对3种具体社会保障事件的分析实验表明,可以很好地挖掘隐性触发因素,准确预测未来可能发生的事件数量。这为管理员控制和防止这些事件的发生提供了一种新的思路和方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
The Correlation Mining and Prediction of Social Security Events Based on Multidimensional Time Series Model
In recent years the frequent occurring of social security events has leaded a serious damage to the masses' life and property. Based on large scale online time series data, this article mines event trigger factors and quantitatively analyzes their correlation to social security events by using multidimensional time series model. In addition, a situation dominated similarity measure method is presented to calculate the degree of similarity to events' development trend. The experiments of analyzing 3 specific kinds of social security events show that the invisible trigger factors can be well mined and accurately predict the number of events may happen in the future. This can provide a new thought and method for the administrator to control and prevent these events from happening.
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