Anomaly detection using dimensionality reduction has been an essential technique for monitoring multidimensional data. Although deep learning-based methods have been well studied for their remarkable detection performance, their interpretability is still a problem. In this paper, we propose a novel algorithm for estimating the dimensions contributing to the detected anomalies by using variational autoencoders (VAEs). Our algorithm is based on an approximative probabilistic model that considers the existence of anomalies in the data, and by maximizing the log-likelihood, we estimate which dimensions contribute to determining data as an anomaly. The experiments results with benchmark datasets show that our algorithm extracts the contributing dimensions more accurately than baseline methods.
翻译:使用维度减少法进行异常检测是监测多维数据的一项基本技术。虽然深层学习方法已经对其显著的检测性能进行了很好的研究,但其可解释性仍然是一个问题。在本文中,我们提出了一个新的算法,通过使用变异自动电解器(VAEs)来估计促成被检测到异常的维度。我们的算法基于一种近似概率模型,该模型考虑到数据中存在异常现象,并通过最大限度地扩大日志相似性,我们估计哪些维度有助于将数据确定为异常。基准数据集的实验结果显示,我们的算法提取出贡献的维度比基线方法更精确。