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MOLESTRA: A Multi-Task Learning Approach for Real-Time Big Data Analytics

机译:MOLESTRA:实时大数据分析的多任务学习方法

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Modern critical infrastructures are characterized by a high degree of complexity, in terms of vulnerabilities, threats, and interdependencies that characterize them. The possible causes of a digital assault or occurrence of a digital attack are not simple to identify, as they may be due to a chain of seemingly insignificant incidents, the combination of which provokes the occurrence of scalar effects on multiple levels. Similarly, the digital explosion of technologies related to the critical infrastructure and the technical characteristics of their subsystems entails the continuous production of a huge amount of data from heterogeneous sources, requiring the adoption of intelligent techniques for critical analysis and optimal decision making. In many applications (e.g. network traffic monitoring) data is received at a high frequency over time. Thus, it is not possible to store all historical samples, which implies that they should be processed in real time and that it may not be possible to re-review old samples (one-pass constraint). We should consider the importance of protecting critical infrastructure, combined with the fact that many of these systems are cyber-attack targets, but they cannot easily be disconnected from their layout as this could lead to generalized operational problems. This research paper proposes a Multi-Task Learning model for Real-Time & Large-Scale Data Analytics, towards the Cyber protection of Critical Infrastructure. More specifically, it suggests the Multi Overlap LEarning STReaming Analytics (MOLESTRA) which is a standardization of the 'Kappa' architecture. The aim is the analysis of large data sets where the tasks are executed in an overlapping manner. This is done to ensure the utilization of the cognitive or learning relationships among the data flows. The proposed architecture uses the k-NN Classifier with Self Adjusting Memory (k-NN SAM). MOLESTRA, provides a clear and effective way to separate the short-term from the long-term memory. In this way the temporal intervals between the transfer of knowledge from one memory to the other and vice versa are differentiated.
机译:现代关键基础设施的特征是高度脆弱性,脆弱性和相互依存关系。数字攻击或数字攻击的可能原因并不容易识别,因为它们可能是由一系列看似无关紧要的事件引起的,这些事件的组合引发了多个级别的标量效应的发生。同样,与关键基础设施及其子系统的技术特征相关的技术的数字化爆炸,也需要从异构源连续生成大量数据,这需要采用智能技术进行关键分析和最佳决策。在许多应用中(例如,网络流量监视),随着时间的流逝高频地接收数据。因此,不可能存储所有历史样本,这意味着应实时处理它们,并且可能无法重新查看旧样本(一次通过约束)。我们应该考虑保护关键基础设施的重要性,并结合以下事实:许多系统都是网络攻击目标,但是它们不容易与布局断开,因为这可能导致普遍的操作问题。本研究论文提出了一种针对实时和大规模数据分析的多任务学习模型,以实现关键基础设施的网络保护。更具体地说,它建议使用“ Multilap OverLearning STReaming Analytics”(MOLESTRA),它是“ Kappa”架构的标准化。目的是分析以重叠方式执行任务的大型数据集。这样做是为了确保利用数据流之间的认知或学习关系。所提出的体系结构使用具有自调整内存的k-NN分类器(k-NN SAM)。 MOLESTRA提供了一种清晰有效的方法,可以将短期记忆与长期记忆分开。以这种方式,区分了知识从一个存储器到另一存储器的转移之间的时间间隔,反之亦然。

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