...
首页> 外文期刊>Continental Shelf Research: A Companion Journal to Deep-Sea Research and Progress in Oceanography >Layer-constrained variational autoencoding kernel density estimation model for anomaly detection
【24h】

Layer-constrained variational autoencoding kernel density estimation model for anomaly detection

机译:异常检测的层约束变分别自动尺寸核密度估计模型

获取原文
获取原文并翻译 | 示例
           

摘要

Unsupervised techniques typically rely on the probability density distribution of the data to detect anomalies, where objects with low probability density are considered to be abnormal. However, modeling the density distribution of high dimensional data is known to be hard, making the problem of detecting anomalies from high-dimensional data challenging. The state-of-the-art methods solve this problem by first applying dimension reduction techniques to the data and then detecting anomalies in the low dimensional space. Unfortunately, the low dimensional space does not necessarily preserve the density distribution of the original high dimensional data. This jeopardizes the effectiveness of anomaly detection. In this work, we propose a novel high dimensional anomaly detection method called LAKE. The key idea of LAKE is to unify the representation learning capacity of layer-constrained variational autoencoder with the density estimation power of kernel density estimation (KDE). Then a probability density distribution of the high dimensional data can be learned, which is able to effectively separate the anomalies out. LAKE successfully consolidates the merits of the two worlds, namely layer-constrained variational autoencoder and KDE by using a probability density-aware strategy in the training process of the autoencoder. Extensive experiments on six public benchmark datasets demonstrate that our method significantly outperforms the state-of-the-art methods in detecting anomalies and achieves up to 37% improvement in F-1 score. (C) 2020 Elsevier B.V. All rights reserved.
机译:无监督的技术通常依赖于检测异常的数据的概率密度分布,其中具有低概率密度的物体被认为是异常的。然而,已知建模高维数据的密度分布很难,使得从高维数据挑战中检测异常的问题。最先进的方法通过首先将尺寸减少技术应用于数据,然后检测低维空间中的异常来解决该问题。不幸的是,低尺寸空间不一定保留原始高维数据的密度分布。这会危及异常检测的有效性。在这项工作中,我们提出了一种新的高尺寸异常检测方法,称为湖泊。湖泊的关键思想是统一层约束变形自动沉积物的表示学习能力,利用内核密度估计(KDE)的密度估计功率。然后可以学习高维数据的概率密度分布,能够有效地将异常分开出来。湖泊通过在AutoEncoder的培训过程中使用概率密度感知策略,成功地巩固了两个世界的优点,即层次约束的变形AutoEncoder和KDE。六个公共基准数据集的广泛实验表明,我们的方法显着优于检测异常的最先进的方法,并在F-1分数中实现高达37%的提高。 (c)2020 Elsevier B.V.保留所有权利。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号