dc.contributorUniversidade Estadual Paulista (Unesp)
dc.date.accessioned2018-12-11T17:34:50Z
dc.date.available2018-12-11T17:34:50Z
dc.date.created2018-12-11T17:34:50Z
dc.date.issued2017-04-25
dc.identifierProbabilistic Prognostics and Health Management of Energy Systems, p. 169-188.
dc.identifierhttp://hdl.handle.net/11449/179351
dc.identifier10.1007/978-3-319-55852-3_10
dc.identifier2-s2.0-85033671443
dc.identifier0956241471937475
dc.identifier0000-0002-6030-639X
dc.description.abstractRemaining useful life (RUL) of an equipment or system is a prognostic value that depends on data gathered from multiple and diverse sources. Moreover, assumed for the sake of the present study as a binary classification problem, the probability of failure of any system is usually very much smaller than that of the same system to be in normal operating conditions. The imbalanced outcome (largely much more 'normal' than 'failure' states) at any time results from the combined values of a large set of features, some related to one another, some redundant, and most quite noisy. Previewing the development and requirements of a robust framework, it is advocated that by using Python libraries, those difficulties can be dealt with. In the present Chapter, DOROTHEA, a dataset from UCI library with a hundred thousand of sparse anonymized (i.e. unrecognizable labels) binary features and imbalanced binary classes are analyzed. For that, an ipython (jupyter) notebook, pandas are used to import the data set, then some exploratory analysis and feature engineering are performed and several estimators (classifiers) obtained from scikit-learn library are applied. It is demonstrated that global accuracy does not work for this case, since the minority class is easily overlooked by the algorithms. Therefore, receiver operating characteristics (ROC), Precision-Recall curves and respective area under curve (AUCs) evaluated from each estimator or ensemble, as well as some simple statistics, using three hybrid methods, that are, a mix of filter, embedded and wrapper methods, feature selection strategies, were compared.
dc.languageeng
dc.relationProbabilistic Prognostics and Health Management of Energy Systems
dc.rightsAcesso restrito
dc.sourceScopus
dc.subjectData analysis
dc.subjectImbalanced classes
dc.subjectMachine learning
dc.subjectPrecision-recall
dc.subjectPython
dc.subjectROC
dc.subjectScikit-learn
dc.titleData analysis in python: Anonymized features and imbalanced data target
dc.typeCapítulos de libros


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