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Context by Proxy: Identifying Contextual Anomalies Using an Output Proxy

机译:Context by代理:使用输出代理识别上下文异常

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Contextual anomalies arise only under special internal or external stimuli in a system, often making it infeasible to detect them by a rule-based approach. Labelling the underlying problem sources is hard because complex, time-dependent relationships between the inputs arise. We propose a novel unsupervised approach that combines tools from deep learning and signal processing, working in a purely data-driven way. Many systems show a desirable target behaviour which can be used as a proxy quantity removing the need to manually label data. The methodology was evaluated on real-life test car traces in the form of multivariate state message sequences. We successfully identified contextual anomalies during the cars' timeout process along with possible explanations. Novel input encodings allow us to summarise the entire system context including the timing such that more information is available during the decision process.
机译:语境异常仅在系统中的特殊内部或外部刺激下出现,通常通过基于规则的方法来检测它们不可行。 标记底层问题来源是艰难的,因为输入之间的复杂,时间依赖关系出现。 我们提出了一种简洁的无监督方法,将工具与深度学习和信号处理相结合,以纯粹的数据驱动方式工作。 许多系统示出了可期望的目标行为,其可以用作去除手动标记数据的需要的代理量。 在多元状态消息序列的形式上对现实测试汽车迹线进行评估方法。 我们在汽车的超时过程中成功地确定了语境异常以及可能的解释。 新颖的输入编码允许我们总结整个系统上下文,包括定时,使得在决策过程中可以使用更多信息。

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