Details

Title

Methodologies of Knowledge Discovery from Data and Data Mining Methods in Mechanical Engineering

Journal title

Management and Production Engineering Review

Yearbook

2016

Numer

No 4

Publication authors

Divisions of PAS

Nauki Techniczne

Publisher

Production Engineering Committee of the Polish Academy of Sciences, Polish Association for Production Management

Date

2016

Identifier

ISSN 2080-8208 ; eISSN 2082-1344

References

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DOI

10.1515/mper-2016-0040

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