Summarization: Purpose – To demonstrate the applicability of machine‐learning tools in quality management. Design/methodology/approach – Two popular machine‐learning approaches, decision tree induction and association rules mining, were applied on a set of 960 production case records. The accuracy of results was investigated using randomized experimentation and comprehensibility of rules was assessed by experts in the field. Findings – Both machine‐learning approaches exhibited very good accuracy of results (average error was about 9 percent); however, association rules mining outperformed decision tree induction in comprehensibility and correctness of learned rules. Research limitations/implications – The proposed methodology is limited wi...
The nature of manufacturing systems faces ever more complex, dynamic and at times even chaotic behav...
Manufacturing organizations need to use different kinds of techniques and tools in order to fulfill ...
The nature of manufacturing systems faces ever more complex, dynamic and at times even chaotic behav...
The advent of artificial intelligence and machine learning is influencing the manufacturing industry...
Μη διαθέσιμη περίληψηNot available summarizationΠαρουσιάστηκε στο: 2nd International Conference on E...
Machine Learning (ML), or the ability of self-learning computer algorithms to autonomously structure...
In this paper, Supervised Machine Learning was used to develop a new approach to handle customers’ c...
According to ISO 9000, a quality management system is part of a set of related or interacting elemen...
Data acquisition, storage and processing becomes increasingly affordable and the use of machine lear...
In industrial applications, the objective of statistical quality management is to achieve quality gu...
A production line is a set of sequential operations established in a factory where materials are put...
The application of modern edge computing solutions within machine tools increasingly empowers the re...
Common objectives in machine learning research are to predict the output quality of manufacturing pr...
While attracting increasing research attention in science and technology, Machine Learning (ML) is p...
Data mining, big data and machine learning are topics that have grown increasingly popular during th...
The nature of manufacturing systems faces ever more complex, dynamic and at times even chaotic behav...
Manufacturing organizations need to use different kinds of techniques and tools in order to fulfill ...
The nature of manufacturing systems faces ever more complex, dynamic and at times even chaotic behav...
The advent of artificial intelligence and machine learning is influencing the manufacturing industry...
Μη διαθέσιμη περίληψηNot available summarizationΠαρουσιάστηκε στο: 2nd International Conference on E...
Machine Learning (ML), or the ability of self-learning computer algorithms to autonomously structure...
In this paper, Supervised Machine Learning was used to develop a new approach to handle customers’ c...
According to ISO 9000, a quality management system is part of a set of related or interacting elemen...
Data acquisition, storage and processing becomes increasingly affordable and the use of machine lear...
In industrial applications, the objective of statistical quality management is to achieve quality gu...
A production line is a set of sequential operations established in a factory where materials are put...
The application of modern edge computing solutions within machine tools increasingly empowers the re...
Common objectives in machine learning research are to predict the output quality of manufacturing pr...
While attracting increasing research attention in science and technology, Machine Learning (ML) is p...
Data mining, big data and machine learning are topics that have grown increasingly popular during th...
The nature of manufacturing systems faces ever more complex, dynamic and at times even chaotic behav...
Manufacturing organizations need to use different kinds of techniques and tools in order to fulfill ...
The nature of manufacturing systems faces ever more complex, dynamic and at times even chaotic behav...