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Incorporating Expert Feedback into Active Anomaly Discovery

机译:将专家反馈整合到主动异常发现中

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Unsupervised anomaly detection algorithms search for outliers and then predict that these outliers are the anomalies. When deployed, however, these algorithms are often criticized for high false positive and high false negative rates. One cause of poor performance is that not all outliers are anomalies and not all anomalies are outliers. In this paper, we describe an Active Anomaly Discovery (AAD) method for incorporating expert feedback to adjust the anomaly detector so that the outliers it discovers are more in tune with the expert user's semantic understanding of the anomalies. The AAD approach is designed to operate in an interactive data exploration loop. In each iteration of this loop, our algorithm first selects a data instance to present to the expert as a potential anomaly and then the expert labels the instance as an anomaly or as a nominal data point. Our algorithm updates its internal model with the instance label and the loop continues until a budget of B queries is spent. The goal of our approach is to maximize the total number of true anomalies in the B instances presented to the expert. We show that when compared to other state-of-the-art algorithms, AAD is consistently one of the best performers.
机译:无监督异常检测算法搜索异常值,然后预测这些异常值是异常。但是,部署这些算法时,通常会批评其误报率高和误报率高。效果不佳的原因之一是,并非所有异常值都是异常值,也不是所有异常值都是异常值。在本文中,我们描述了一种主动异常发现(AAD)方法,该方法结合了专家反馈来调整异常检测器,以使其发现的异常值与专家用户对异常的语义理解更加一致。 AAD方法旨在在交互式数据探索循环中运行。在此循环的每次迭代中,我们的算法首先选择一个数据实例作为潜在异常呈现给专家,然后专家将实例标记为异常或标称数据点。我们的算法使用实例标签更新其内部模型,并且循环继续进行,直到花费了B个查询的预算为止。我们方法的目标是最大程度地提高呈现给专家的B个实例中真实异常的总数。我们证明,与其他最新算法相比,AAD始终是性能最好的算法之一。

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