{"title":"艺术犯罪不赔钱:文化遗产贩运取证中的多重社会网络分析","authors":"Jarno Salonen, Alessandro Guarino","doi":"10.34190/iccws.19.1.2066","DOIUrl":null,"url":null,"abstract":"Nowadays, crimes connected to cultural heritage can feature as a staple for organised crime networks and act as financial enablers for international conflicts, including terrorism organisations and even inter-state conflicts, in several ways. Goods of cultural significance include a range of valuable objects related to human cultures, like works of art, historical artefacts, and other antiques, but also forgeries based on such objects. These crimes are almost always transnational, for instance, involving theft or looting in one country and goods moved across borders to be sold. This article presents an intelligence methodology based on Social Network Analysis (SNA) techniques that can support law enforcement agencies (LEAs) in their daily struggle against criminals that also pose a threat to national security. The methodology proposed is based on the building of a blended, multiplexed social network graph, deriving from the fusion of a diverse set of data sources, both in the open-source domain (OSINT) and in the classified domain. We will present data collection methods, correlation between sources, possible ways to generate blended links between individuals that retain information from different sources, and SNA techniques applied to intelligence and investigations. The article provides an answer to the following research questions: how we can detect and identify criminal activities and networks related to cultural goods crimes, how we can assist LEAs in countering illicit trafficking, and how we can ensure that art crime does not pay.","PeriodicalId":429427,"journal":{"name":"International Conference on Cyber Warfare and Security","volume":" 1","pages":""},"PeriodicalIF":0.0000,"publicationDate":"2024-03-21","publicationTypes":"Journal Article","fieldsOfStudy":null,"isOpenAccess":false,"openAccessPdf":"","citationCount":"0","resultStr":"{\"title\":\"Art Crime Does not pay: Multiplexed Social Network Analysis in Cultural Heritage Trafficking Forensics\",\"authors\":\"Jarno Salonen, Alessandro Guarino\",\"doi\":\"10.34190/iccws.19.1.2066\",\"DOIUrl\":null,\"url\":null,\"abstract\":\"Nowadays, crimes connected to cultural heritage can feature as a staple for organised crime networks and act as financial enablers for international conflicts, including terrorism organisations and even inter-state conflicts, in several ways. Goods of cultural significance include a range of valuable objects related to human cultures, like works of art, historical artefacts, and other antiques, but also forgeries based on such objects. These crimes are almost always transnational, for instance, involving theft or looting in one country and goods moved across borders to be sold. This article presents an intelligence methodology based on Social Network Analysis (SNA) techniques that can support law enforcement agencies (LEAs) in their daily struggle against criminals that also pose a threat to national security. The methodology proposed is based on the building of a blended, multiplexed social network graph, deriving from the fusion of a diverse set of data sources, both in the open-source domain (OSINT) and in the classified domain. We will present data collection methods, correlation between sources, possible ways to generate blended links between individuals that retain information from different sources, and SNA techniques applied to intelligence and investigations. 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引用次数: 0
摘要
如今,与文化遗产有关的犯罪已成为有组织犯罪网络的主要活动,并以多种方式为国 际冲突,包括恐怖主义组织,甚至国家间冲突提供资金支持。具有文化意义的物品包括一系列与人类文化相关的珍贵物品,如艺术品、历史文物和其他古董,也包括以这些物品为基础的伪造品。这些犯罪几乎都是跨国犯罪,例如在一个国家进行盗窃或抢劫,然后将货物跨境转移出售。本文介绍了一种基于社交网络分析(SNA)技术的情报方法,可帮助执法机构(LEAs)打击对国家安全构成威胁的犯罪分子。所提出的方法基于建立一个混合的、多路复用的社交网络图,该社交网络图来自于开放源码领域(OSINT)和机密领域的各种数据源的融合。我们将介绍数据收集方法、数据源之间的相关性、在保留不同来源信息的个人之间生成混合链接的可能方法,以及应用于情报和调查的 SNA 技术。这篇文章为以下研究问题提供了答案:我们如何才能发现和识别与文化产品犯罪相关的犯罪活动和网络,我们如何才能协助执法机构打击非法贩运,以及我们如何才能确保艺术品犯罪不会得逞。
Art Crime Does not pay: Multiplexed Social Network Analysis in Cultural Heritage Trafficking Forensics
Nowadays, crimes connected to cultural heritage can feature as a staple for organised crime networks and act as financial enablers for international conflicts, including terrorism organisations and even inter-state conflicts, in several ways. Goods of cultural significance include a range of valuable objects related to human cultures, like works of art, historical artefacts, and other antiques, but also forgeries based on such objects. These crimes are almost always transnational, for instance, involving theft or looting in one country and goods moved across borders to be sold. This article presents an intelligence methodology based on Social Network Analysis (SNA) techniques that can support law enforcement agencies (LEAs) in their daily struggle against criminals that also pose a threat to national security. The methodology proposed is based on the building of a blended, multiplexed social network graph, deriving from the fusion of a diverse set of data sources, both in the open-source domain (OSINT) and in the classified domain. We will present data collection methods, correlation between sources, possible ways to generate blended links between individuals that retain information from different sources, and SNA techniques applied to intelligence and investigations. The article provides an answer to the following research questions: how we can detect and identify criminal activities and networks related to cultural goods crimes, how we can assist LEAs in countering illicit trafficking, and how we can ensure that art crime does not pay.