...
首页> 外文期刊>Data technologies and applications >Who is the boss? Identifying key roles in telecom fraud network via centrality-guided deep random walk
【24h】

Who is the boss? Identifying key roles in telecom fraud network via centrality-guided deep random walk

机译:老板是谁?欺诈通过centrality-guided深随机网络走

获取原文
获取原文并翻译 | 示例
           

摘要

Purpose Telecommunication (telecom) fraud is one of the most common crimes and causes the greatest financial losses. To effectively eradicate fraud groups, the key fraudsters must be identified and captured. One strategy is to analyze the fraud interaction network using social network analysis. However, the underlying structures of fraud networks are different from those of common social networks, which makes traditional indicators such as centrality not directly applicable. Recently, a new line of research called deep random walk has emerged. These methods utilize random walks to explore local information and then apply deep learning algorithms to learn the representative feature vectors. Although effective for many types of networks, random walk is used for discovering local structural equivalence and does not consider the global properties of nodes. Design/methodology/approach The authors proposed a new method to combine the merits of deep random walk and social network analysis, which is called centrality-guided deep random walk. By using the centrality of nodes as edge weights, the authors' biased random walks implicitly consider the global importance of nodes and can thus find key fraudster roles more accurately. To evaluate the authors' algorithm, a real telecom fraud data set with around 562 fraudsters was built, which is the largest telecom fraud network to date. Findings The authors' proposed method achieved better results than traditional centrality indices and various deep random walk algorithms and successfully identified key roles in a fraud network. Research limitations/implications The study used co-offending and flight record to construct a criminal network, more interpersonal relationships of fraudsters, such as friendships and relatives, can be included in the future. Originality/value This paper proposed a novel algorithm, centrality-guided deep random walk, and applied it to a new telecom fraud data set. Experimental results show that the authors' method can successfully identify the key roles in a fraud group and outperform other baseline methods. To the best of the authors' knowledge, it is the largest analysis of telecom fraud network to date.
机译:电信(电信)欺诈是一个目的最常见的犯罪和最大的原因经济损失。组,关键必须识别和骗子被俘。使用社交网络交互网络分析。不同于常见的诈骗网络社交网络,这使得传统中心不直接等指标适用。称为深随机漫步已经出现。方法利用随机漫步探索的地方信息,然后应用深度学习算法学习代表特性向量。网络、随机游走是用来发现的当地的结构等效和不考虑节点的全局属性。设计/方法/方法提出新方法相结合的优点深随机的走路和社会网络分析centrality-guided深随机漫步。中心的节点作为边的权值,作者的偏置随机漫步隐式地考虑全球节点,因此可以找到关键的重要性骗子的角色更准确。作者的算法,一个真正的电信欺诈数据集大约有562骗子,这是迄今为止最大的电信诈骗网络。发现作者的方法实现更好的结果比传统的中心指数和不同深度随机漫步算法并成功地识别欺诈的重要角色网络。研究使用co-offending和飞行记录构造一个犯罪网络,更多的人际关系骗子的关系,比如友谊和亲戚,可以包括在未来。创意/值提出了一种新颖的算法,centrality-guided深随机漫步,和应用新的电信诈骗的数据集。实验结果表明,作者的方法可以成功地识别的关键角色欺诈集团和超越其他基线方法。它是最大的电信欺诈的分析网络约会。

著录项

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