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Catalogue : Details

Leonid Mylnikov (Ed.)

Intelligent data analysis in the management of production systems

Approaches and methods

FrontBack
 
ISBN:978-3-8440-6038-6
Series:Wirtschaftsinformatik
Keywords:project management; production systems; prediction; time series; risk assessment; data preparation; data mining; machine learning
Type of publication:Reference books
Language:English
Pages:180 pages
Figures:37 figures
Weight:270 g
Format:21 x 14,8 cm
Binding:Paperback
Price:35,80 € / 44,80 SFr
Published:December 2018
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DOI:10.2370/9783844060386 (Online document)
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Abstract:This study is related to the increasing role of prognostic models in the management of production systems. Authors with different scientific background have worked together to find approaches for the improvement of real-life management decisions in production environments. The creative mixture of innovation and performance management methods, data mining and predictive models, time-series analysis and semi-supervised training is not only of great scientific interest but also leads to increased validity and quality of management decisions.