异常检测
离群值
歧管(流体力学)
歧管对齐
计算机科学
公制(单位)
嵌入
非线性降维
光学(聚焦)
图形
数据挖掘
数据集
模式识别(心理学)
拓扑(电路)
算法
数学
理论计算机科学
人工智能
降维
物理
组合数学
机械工程
运营管理
光学
工程类
经济
作者
Moritz Herrmann,Florian Pfisterer,Fabian Scheipl
出处
期刊:Cornell University - arXiv
日期:2022-07-01
被引量:2
标识
DOI:10.48550/arxiv.2207.00367
摘要
Outlier or anomaly detection is an important task in data analysis. We discuss the problem from a geometrical perspective and provide a framework that exploits the metric structure of a data set. Our approach rests on the manifold assumption, i.e., that the observed, nominally high-dimensional data lie on a much lower dimensional manifold and that this intrinsic structure can be inferred with manifold learning methods. We show that exploiting this structure significantly improves the detection of outlying observations in high-dimensional data. We also suggest a novel, mathematically precise, and widely applicable distinction between distributional and structural outliers based on the geometry and topology of the data manifold that clarifies conceptual ambiguities prevalent throughout the literature. Our experiments focus on functional data as one class of structured high-dimensional data, but the framework we propose is completely general and we include image and graph data applications. Our results show that the outlier structure of high-dimensional and non-tabular data can be detected and visualized using manifold learning methods and quantified using standard outlier scoring methods applied to the manifold embedding vectors.
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