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Reasoning with Small Data Samples for Organised Crime

机译:利用小数据样本进行有组织犯罪的推理

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Building upon the possibilities of technologies like big data analytics, representational models, machine learning, semantic reasoning and augmented intelligence, our work presented in this paper, which has been performed within the collaborative research project MAGNETO (Technologies for prevention, investigation, and mitigation in the context of the fight against crime and terrorism), co-funded by the European Commission within Horizon 2020 programme, is going to support Law Enforcement Agencies (LEAs) in their critical need to exploit all available resources, and handling the large amount of diversified media modalities to effectively carry out criminal investigation. The paper at hand focuses at the application of machine learning solutions and reasoning tools, even with only small data samples. Due to the fact that the MAGNETO tools have to operate on highly sensitive data from criminal investigations, the data samples provided to the tool developers have been small, scarce, and often not correlated. The project team had to overcome these drawbacks. The developed reasoning tools are based on the MAGNETO ontology and knowledge base and enables LEA officers to uncover derived facts that are not expressed in the knowledge base explicitly, as well as discover new knowledge of relations between different objects and items of data. Two reasoning tools have been implemented, a probabilistic reasoning tool based on Markov Logic Networks and a logical reasoning tool. The design of the tools and their interfaces will be presented, as well as the results provided by the tools, when applied to operational use cases.
机译:利用大数据分析,表示模型,机器学习,语义推理和增强智能等技术的可能性,我们在本文中介绍的工作已在MAGNETO(预防,调查和缓解技术)合作研究项目中完成。欧盟在2020年计划范围内共同资助的反犯罪和恐怖主义斗争背景)将支持执法机构(LEA)迫切需要利用所有可用资源并处理大量媒体形式,以有效地开展刑事侦查。本文仅针对机器学习解决方案和推理工具的应用,即使只有少量数据样本也是如此。由于MAGNETO工具必须对来自刑事调查的高度敏感的数据进行操作,因此提供给工具开发人员的数据样本很小,稀缺且通常不相关。项目团队必须克服这些缺点。所开发的推理工具基于MAGNETO本体和知识库,并使LEA官员能够发现未明确表示在知识库中的派生事实,并发现有关不同对象与数据项之间关系的新知识。已经实现了两个推理工具,一个基于Markov Logic Networks的概率推理工具和一个逻辑推理工具。当应用于操作用例时,将介绍工具的设计及其接口,以及工具提供的结果。

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