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Business Process Management Workshops
A Deep Learning Approach for Predicting Process Behaviour at Runtime
other
Author(s):
Joerg Evermann
,
Jana-Rebecca Rehse
,
Peter Fettke
Publication date
(Online):
May 06 2017
Publisher:
Springer International Publishing
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Computer Vision, Deep Learning, Deep Reinforcement Learning, IoT
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Supervised Sequence Labelling with Recurrent Neural Networks
Alex Graves
(2012)
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Time prediction based on process mining
W.M.P. van der Aalst
,
M. Song
,
M.H. Schonenberg
(2011)
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Business Process Intelligence
Ming-Chien Shan
,
Daniela Grigori
,
Umeshwar Dayal
…
(2004)
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Author and book information
Book Chapter
Publication date (Print):
2017
Publication date (Online):
May 06 2017
Pages
: 327-338
DOI:
10.1007/978-3-319-58457-7_24
SO-VID:
1ce9bac9-285f-4244-8e94-15186cadeefd
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Book chapters
pp. 327
A Deep Learning Approach for Predicting Process Behaviour at Runtime
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