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    Unsupervised Anomaly Detection via Nonlinear Manifold Learning

    Source: Journal of Computing and Information Science in Engineering:;2024:;volume( 024 ):;issue: 011::page 111008-1
    Author:
    Yousefpour, Amin
    ,
    Shishehbor, Mehdi
    ,
    Zanjani Foumani, Zahra
    ,
    Bostanabad, Ramin
    DOI: 10.1115/1.4063642
    Publisher: The American Society of Mechanical Engineers (ASME)
    Abstract: Anomalies are samples that significantly deviate from the rest of the data and their detection plays a major role in building machine learning models that can be reliably used in applications such as data-driven design and novelty detection. The majority of existing anomaly detection methods either are exclusively developed for (semi) supervised settings, or provide poor performance in unsupervised applications where there are no training data with labeled anomalous samples. To bridge this research gap, we introduce a robust, efficient, and interpretable methodology based on nonlinear manifold learning to detect anomalies in unsupervised settings. The essence of our approach is to learn a low-dimensional and interpretable latent representation (aka manifold) for all the data points such that normal samples are automatically clustered together and hence can be easily and robustly identified. We learn this low-dimensional manifold by designing a learning algorithm that leverages either a latent map Gaussian process (LMGP) or a deep autoencoder (AE). Our LMGP-based approach, in particular, provides a probabilistic perspective on the learning task and is ideal for high-dimensional applications with scarce data. We demonstrate the superior performance of our approach over existing technologies via multiple analytic examples and real-world datasets.
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      Unsupervised Anomaly Detection via Nonlinear Manifold Learning

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    http://yetl.yabesh.ir/yetl1/handle/yetl/4303191
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    contributor authorYousefpour, Amin
    contributor authorShishehbor, Mehdi
    contributor authorZanjani Foumani, Zahra
    contributor authorBostanabad, Ramin
    date accessioned2024-12-24T19:02:44Z
    date available2024-12-24T19:02:44Z
    date copyright8/6/2024 12:00:00 AM
    date issued2024
    identifier issn1530-9827
    identifier otherjcise_24_11_111008.pdf
    identifier urihttp://yetl.yabesh.ir/yetl1/handle/yetl/4303191
    description abstractAnomalies are samples that significantly deviate from the rest of the data and their detection plays a major role in building machine learning models that can be reliably used in applications such as data-driven design and novelty detection. The majority of existing anomaly detection methods either are exclusively developed for (semi) supervised settings, or provide poor performance in unsupervised applications where there are no training data with labeled anomalous samples. To bridge this research gap, we introduce a robust, efficient, and interpretable methodology based on nonlinear manifold learning to detect anomalies in unsupervised settings. The essence of our approach is to learn a low-dimensional and interpretable latent representation (aka manifold) for all the data points such that normal samples are automatically clustered together and hence can be easily and robustly identified. We learn this low-dimensional manifold by designing a learning algorithm that leverages either a latent map Gaussian process (LMGP) or a deep autoencoder (AE). Our LMGP-based approach, in particular, provides a probabilistic perspective on the learning task and is ideal for high-dimensional applications with scarce data. We demonstrate the superior performance of our approach over existing technologies via multiple analytic examples and real-world datasets.
    publisherThe American Society of Mechanical Engineers (ASME)
    titleUnsupervised Anomaly Detection via Nonlinear Manifold Learning
    typeJournal Paper
    journal volume24
    journal issue11
    journal titleJournal of Computing and Information Science in Engineering
    identifier doi10.1115/1.4063642
    journal fristpage111008-1
    journal lastpage111008-16
    page16
    treeJournal of Computing and Information Science in Engineering:;2024:;volume( 024 ):;issue: 011
    contenttypeFulltext
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    نرم افزار کتابخانه دیجیتال "دی اسپیس" فارسی شده توسط یابش برای کتابخانه های ایرانی | تماس با یابش
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