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Reconciling malware labeling discrepancy via consensus learning

机译:通过共识学习协调恶意软件标签差异

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Anti-virus systems developed by different vendors often demonstrate strong discrepancy in the labels they assign to given malware, which significantly hinders threat intelligence sharing. The key challenge of addressing this discrepancy stems from the difficulty of re-standardizing already-in-use systems. In this paper we explore a non-intrusive alternative. We propose to leverage the correlation between the malware labels of different anti-virus systems to create a “consensus” classification system, through which different systems can share information without modifying their own labeling conventions. To this end, we present a novel classification integration framework Latin which exploits the correspondence between participating anti-virus systems as reflected in heterogeneous information at instance-instance, instance-class, and class-class levels. We provide results from extensive experimental studies using real datasets and concrete use cases to verify the efficacy of Latin in reconciling the malware labeling discrepancy.
机译:不同供应商开发的防病毒系统经常在他们分配给给定恶意软件的标签中展示强烈的差异,这显着阻碍了威胁情报共享。解决这种差异的关键挑战源于重新标准化已使用的系统的难度。在本文中,我们探索了一个非侵入式替代品。我们建议利用不同反病毒系统的恶意软件标签之间的相关性,以创建“共识”分类系统,通过哪些不同的系统可以在不修改自己的标签约定的情况下共享信息。为此,我们提出了一种新颖的分类集成框架拉丁语,它利用了参与的反病毒系统之间的对应关系,该系统在实例,实例类和类级别中反映在异构信息中。我们提供广泛的实验研究的结果,使用实际数据集和具体用例来验证拉丁语在重新调整恶意软件标签差异方面的疗效。

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