Publication | Closed Access
Interpreting out-of-control signals using instance-based bayesian classifier in multivariate statistical process control
15
Citations
25
References
2014
Year
Instance-based Naive BayesEngineeringMachine LearningIntelligent SystemsBayesian InferenceBenchmark ExamplesClassification MethodData ScienceData MiningUncertainty QuantificationPattern RecognitionSystems EngineeringStatisticsOut-of-control SignalsTest InstanceProcess MeasurementInstance-based LearningInstance-based Bayesian ClassifierPredictive AnalyticsProcess MonitoringProcess AnalysisIntelligent ClassificationComputer ScienceSignal ProcessingProcess ControlBusinessStatistical InferenceIndustrial Process Control
In this article, an instance-based naive Bayes (INB) method is proposed to interpret out-of-control signals. By training one for one classifier, this method considers the similar features between test instance and training instances. For three benchmark examples with small number of variables, the experimental results show that INB outperforms all techniques in overall average performance; in cases of more than two variables, INB performs better in most scenarios. For two examples with large number of variables, the experimental results show that INB can be applied to practical problems. This research indicates that INB is very encouraging for interpreting the out-of-control signals in multivariate statistical process control.
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