Follow
Irene Teinemaa
Title
Cited by
Cited by
Year
Outcome-oriented predictive process monitoring: review and benchmark
I Teinemaa, M Dumas, M La Rosa, FM Maggi
ACM Transactions on Knowledge Discovery in Data 13 (2), 17:1-17:57, 2019
1612019
Clustering-based predictive process monitoring
C Di Francescomarino, M Dumas, FM Maggi, I Teinemaa
IEEE transactions on services computing 12 (6), 896-909, 2016
1462016
Survey and cross-benchmark comparison of remaining time prediction methods in business process monitoring
I Verenich, M Dumas, ML Rosa, FM Maggi, I Teinemaa
ACM Transactions on Intelligent Systems and Technology (TIST) 10 (4), 1-34, 2019
932019
Predictive business process monitoring with structured and unstructured data
I Teinemaa, M Dumas, FM Maggi, CD Francescomarino
International Conference on Business Process Management, 401-417, 2016
812016
Semantics and analysis of DMN decision tables
D Calvanese, M Dumas, Ü Laurson, FM Maggi, M Montali, I Teinemaa
International Conference on Business Process Management, 217-233, 2016
532016
Semantics, analysis and simplification of DMN decision tables
D Calvanese, M Dumas, Ü Laurson, FM Maggi, M Montali, I Teinemaa
Information Systems 78, 112-125, 2018
412018
Temporal Stability in Predictive Process Monitoring
I Teinemaa, M Dumas, A Leontjeva, FM Maggi
Data Mining and Knowledge Discovery 32 (5), 1306–1338, 2018
352018
Alarm-Based Prescriptive Process Monitoring
I Teinemaa, N Tax, M de Leoni, M Dumas, FM Maggi
International Conference on Business Process Management 329, 91-107, 2018
272018
An interdisciplinary comparison of sequence modeling methods for next-element prediction
N Tax, I Teinemaa, SJ van Zelst
Software and Systems Modeling 19 (6), 1345-1365, 2020
232020
Process mining meets causal machine learning: Discovering causal rules from event logs
ZD Bozorgi, I Teinemaa, M Dumas, M La Rosa, A Polyvyanyy
2020 2nd International Conference on Process Mining (ICPM), 129-136, 2020
232020
An interdisciplinary comparison of sequence modeling methods for next-element prediction
N Tax, I Teinemaa, SJ van Zelst
arXiv preprint arXiv:1811.00062, 2018
192018
Personalization in Practice: Methods and Applications
D Goldenberg, K Kofman, J Albert, S Mizrachi, A Horowitz, I Teinemaa
Proceedings of the 14th ACM International Conference on Web Search and Data …, 2021
182021
Fire now, fire later: alarm-based systems for prescriptive process monitoring
SA Fahrenkrog-Petersen, N Tax, I Teinemaa, M Dumas, M Leoni, ...
Knowledge and Information Systems 64 (2), 559-587, 2022
142022
BPIC 2015: Diagnostics of building permit application process in dutch municipalities
I Teinemaa, A Leontjeva, KO Masing
BPI Challenge Report 72, 2015
132015
A ProM Operational Support Provider for Predictive Monitoring of Business Processes.
M Federici, W Rizzi, C Di Francescomarino, M Dumas, C Ghidini, ...
BPM (Demos), 1-5, 2015
92015
Prescriptive process monitoring for cost-aware cycle time reduction
ZD Bozorgi, I Teinemaa, M Dumas, M La Rosa, A Polyvyanyy
2021 3rd International Conference on Process Mining (ICPM), 96-103, 2021
82021
An experimental evaluation of the generalizing capabilities of process discovery techniques and black-box sequence models
N Tax, SJ Zelst, I Teinemaa
Enterprise, Business-Process and Information Systems Modeling, 165-180, 2018
82018
Community-based prediction of activity change in Skype
I Teinemaa, A Leontjeva, M Dumas, R Kikas
2015 IEEE/ACM International Conference on Advances in Social Networks …, 2015
72015
Predictive and Prescriptive Monitoring of Business Process Outcomes.
I Teinemaa, B Depaire
BPM (PhD/Demos), 15-19, 2019
42019
Uplift Modeling: From Causal Inference to Personalization
I Teinemaa, J Albert, D Goldenberg
WebConf, 2021
12021
The system can't perform the operation now. Try again later.
Articles 1–20