【24h】

SPINN: Suspicion prediction in nuclear networks

机译:Spinn:核网络中的怀疑预测

获取原文

摘要

The best known analyses to date of nuclear proliferation networks are qualitative analyses of networks consisting of just hundreds of nodes and edges. We propose SPINN - a computational framework that performs the following tasks. Starting from existing lists of sanctioned entities, SPINN automatically builds a highly augmented network by scraping connections between individuals, companies, and government organizations from sources like LinkedIN and public company data from Bloomberg. By analyzing this open source information alone, we have built up a network of over 74K nodes and 1.09M edges, containing a smaller whitelist and a blacklist. We develop numerous “features” of nodes in such networks that take both intrinsic node properties and network properties into account, and based on these, we develop methods to classify previously unclassified nodes as suspicious or unsuspicious. On 10-fold cross validation on ground truth data, we obtain a Matthews Correlation Coefficient for our best classifier of just over 0.9. We show that of the 10 most relevant features for distinguishing between suspicious and non-suspicious nodes, the top 8 are network related measures including a novel notion of suspicion rank.
机译:最有名的分析核扩散网络的日期是由刚刚数百个节点和边缘的网络的定性分析。我们提出Spinn - 一种执行以下任务的计算框架。从现有的制裁实体列表开始,Spinn通过来自LinkedIn和来自Bloomberg等来源的来源来自动构建高度增强的网络,这些来源与来自Bloomberg等彭博等的来源。通过单独分析此开源信息,我们建立了超过74K个节点和1.09M边的网络,其中包含较小的白名单和黑名单。我们在这些网络中开发了众多“功能”,这些网络中的内在节点属性和网络属性都考虑,并基于这些网络,我们开发了对先前未分类的节点进行分类的方法,以可疑或不可用。根据地面真理数据的10倍交叉验证,我们获得了最佳分类器的马修斯相关系数,略高于0.9。我们表明,在可疑和非可疑节点之间区分10个最相关的功能,前8名是网络相关措施,包括一种新颖的怀疑队伍。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号