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dc.contributor.authorTchao, Edgard M. Maboudou-
dc.contributor.authorSilva, Ivair Ramos-
dc.contributor.authorDiawara, Norou-
dc.date.accessioned2018-02-01T13:33:34Z-
dc.date.available2018-02-01T13:33:34Z-
dc.date.issued2016-
dc.identifier.citationTCHAO, E. M. M.; SILVA, I. R.; DIAWARA, N. Monitoring the mean vector with Mahalanobis kernels. Quality Technology & Quantitative Management, v. 1, p. 1-16, 2016. Disponível em: <http://www.tandfonline.com/doi/abs/10.1080/16843703.2016.1226707?journalCode=ttqm20>. Acesso em: 16 jan. 2018.pt_BR
dc.identifier.issn1684-3703-
dc.identifier.urihttp://www.repositorio.ufop.br/handle/123456789/9398-
dc.description.abstractStatistical process control (SPC) applies the science of statistics to various process controls in order to provide higher-quality products and better services. Multivariate control charts are essential tools in multivariate SPC. Hotelling’s T2 charts based on rational subgroups of sample sizes larger than one are very sensitive for detecting relatively large shifts in the process mean vectors. However, it makes some very restrictive assumptions (multivariate normal distribution) that are usually difficult to be satisfied in real applications. Modern processes do not satisfy classical methods assumptions, such as normality or linearity. To overcome this issue, introduction of new techniques from statistical machine learning theory has been applied. Control charts based on Support Vector Data Description (SVDD), a popular data classifiermethod inspired by Support VectorMachines, benefit from a wide variety of choices of kernels, which determine the effectiveness of the whole model. Among the most popular choices of kernels is the Euclidean distance-based Gaussian kernel, which enables SVDD to obtain a flexible data description, thus enhances its overall predictive capability. This paper explores an even more robust approach by incorporating the Mahalanobis distance-based kernel (hereinafter referred to as Mahalanobis kernel) to SVDD and compares it with SVDD using the traditional Gaussian kernel.pt_BR
dc.language.isoen_USpt_BR
dc.rightsrestritopt_BR
dc.subjectMercer kernelpt_BR
dc.subjectStatistical process controlpt_BR
dc.subjectSupport vectorspt_BR
dc.subjectMachine learningpt_BR
dc.titleMonitoring the mean vector with Mahalanobis kernels.pt_BR
dc.typeArtigo publicado em periodicopt_BR
dc.identifier.uri2http://www.tandfonline.com/doi/abs/10.1080/16843703.2016.1226707?journalCode=ttqm20pt_BR
dc.identifier.doihttps://doi.org/10.1080/16843703.2016.1226707-
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