sift:principal_component_analysis:outlier_detection_for_pca
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sift:principal_component_analysis:outlier_detection_for_pca [2024/08/28 19:00] – [Squared Prediction Error (SPE)] wikisysop | sift:principal_component_analysis:outlier_detection_for_pca [2024/08/28 19:04] (current) – [Reference] wikisysop | ||
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==== Local Outlier Factor ==== | ==== Local Outlier Factor ==== | ||
- | Local Outlier Factor (LOF) is an unsupervised method of finding outliers through a data points local density, introduced in 2000 by Breunig et al. [[[https:// | + | Local Outlier Factor (LOF) is an unsupervised method of finding outliers through a data points local density, introduced in 2000 by Breunig et al. [[https:// |
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If we successfully reject the null hypothesis, we remove the outlier from the data, and calculate the statistic again or until we have calculated it on each data point. We can recalculate the new covariance, and continue this until no outliers are detected, or stop after X iterations have occurred (X being up to the user). | If we successfully reject the null hypothesis, we remove the outlier from the data, and calculate the statistic again or until we have calculated it on each data point. We can recalculate the new covariance, and continue this until no outliers are detected, or stop after X iterations have occurred (X being up to the user). | ||
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Markus M. Breunig, Hans-Peter Kriegel, Raymond T. Ng, and Jörg Sander. 2000. LOF: identifying density-based local outliers. SIGMOD Rec. 29, 2 (June 2000), 93–104. https:// | Markus M. Breunig, Hans-Peter Kriegel, Raymond T. Ng, and Jörg Sander. 2000. LOF: identifying density-based local outliers. SIGMOD Rec. 29, 2 (June 2000), 93–104. https:// | ||
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**Abstract** | **Abstract** | ||
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For many KDD applications, | For many KDD applications, | ||
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+ | Slišković, | ||
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+ | **Abstract** | ||
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+ | Demands regarding production efficiency, product quality, safety levels and environment protection are continuously increasing in the process industry. The way to accomplish these demands is to introduce ever more complex automatic control systems which require more process variables to be measured and more advanced measurement systems. Quality and reliable measurements of process variables are the basis for the quality process control. Process equipment failures can significantly deteriorate production process and even cause production outage, resulting in high additional costs. This paper analyzes automatic fault detection and identification of process measurement equipment, i.e. sensors. Different statistical methods can be used for this purpose in a way that continuously acquired measurements are analyzed by these methods. In this paper, PCA and ICA methods are used for relationship modelling which exists between process variables while Hotelling' | ||
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sift/principal_component_analysis/outlier_detection_for_pca.1724871605.txt.gz · Last modified: 2024/08/28 19:00 by wikisysop