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A Non-numerical Predictive Model for Asymmetric Analysis

机译:用于非对称分析的非数值预测模型

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摘要

Predicting asymmetric threats (e.g., terrorist events) is becoming ever more important. Prior works have focused on tactical, statistical, and data-fusion systems. The thrust of our work has been the development of a non-numerical predictive model for amplifying intelligence analysts' recognition of emergent threats. The intelligence community uses a Template schema for assessing courses of action. Our predictive model processes non-numerical data to arrive at automated assessment and confidence scores for these Templates. The predictive model is traceable, transparent, and utilizes Human-in-the-Loop data-fusion. For future work, this predictive model will be further enhanced with behavioral filtering. Behavioral filtering adjusts the assessment and confidence of the predictions by intelligently evaluating characteristic behavioral data. This non-numerical predictive model has been tested and verified in the Asymmetric Threat Response and Analysis Program (ATRAP).
机译:预测不对称威胁(例如恐怖事件)变得越来越重要。先前的工作集中在战术,统计和数据融合系统上。我们工作的重点是开发非数字预测模型,以扩大情报分析师对紧急威胁的认识。情报界使用模板架构来评估行动方案。我们的预测模型处理非数字数据,以获取这些模板的自动评估和置信度分数。预测模型是可追溯的,透明的,并利用了环内数据融合技术。对于将来的工作,将通过行为过滤进一步增强此预测模型。行为过滤通过智能评估特征行为数据来调整预测的评估和置信度。此非数字预测模型已在非对称威胁响应和分析程序(ATRAP)中进行了测试和验证。

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