Nothing Special   »   [go: up one dir, main page]

skip to main content
research-article

An Experimental Evaluation of Process Concept Drift Detection

Published: 01 April 2023 Publication History

Abstract

Process mining provides techniques to learn models from event data. These models can be descriptive (e.g., Petri nets) or predictive (e.g., neural networks). The learned models offer operational support to process owners by conformance checking, process enhancement, or predictive monitoring. However, processes are frequently subject to significant changes, making the learned models outdated and less valuable over time. To tackle this problem, Process Concept Drift (PCD) detection techniques are employed. By identifying when the process changes occur, one can replace learned models by relearning, updating, or discounting pre-drift knowledge. Various techniques to detect PCDs have been proposed. However, each technique's evaluation focuses on different evaluation goals out of accuracy, latency, versatility, scalability, parameter sensitivity, and robustness. Furthermore, the employed evaluation techniques and data sets differ. Since many techniques are not evaluated against more than one other technique, this lack of comparability raises one question: How do PCD detection techniques compare against each other? With this paper, we propose, implement, and apply a unified evaluation framework for PCD detection. We do this by collecting evaluation goals and evaluation techniques together with data sets. We derive a representative sample of techniques from a taxonomy for PCD detection. The implemented techniques and proposed evaluation framework are provided in a publicly available repository. We present the results of our experimental evaluation and observe that none of the implemented techniques works well across all evaluation goals. However, the results indicate future improvement points of algorithms and guide practitioners.

References

[1]
Rafael Accorsi and Thomas Stocker. 2011. Discovering Workflow Changes with Time-Based Trace Clustering. In Data-Driven Process Discovery and Analysis - First International Symposium, SIMPDA 2011, Campione d'Italia, Italy, June 29 -- July 1, 2011, Revised Selected Papers, Karl Aberer, Ernesto Damiani, and Tharam S. Dillon (Eds.). Springer, 154--168.
[2]
Jan Niklas Adams, Sebastiaan J. van Zelst, Thomas Rose, and Wil M. P. van der Aalst. 2023. Explainable concept drift in process mining. Inf. Syst. 114 (2023), 102177.
[3]
Cesare Alippi, Giacomo Boracchi, and Manuel Roveri. 2017. Hierarchical Change-Detection Tests. IEEE Trans. Neural Networks Learn. Syst. 28, 2 (2017), 246--258.
[4]
Cesare Alippi and Manuel Roveri. 2008. Just-in-Time Adaptive Classifiers - Part I: Detecting Nonstationary Changes. IEEE Trans. Neural Networks 19, 7 (2008), 1145--1153.
[5]
Adriano Augusto, Raffaele Conforti, Marlon Dumas, Marcello La Rosa, and Artem Polyvyanyy. 2019. Split miner: automated discovery of accurate and simple business process models from event logs. Knowledge and Information Systems 59, 2 (2019), 251--284.
[6]
Albert Bifet and Ricard Gavaldà. 2007. Learning from Time-Changing Data with Adaptive Windowing. In Proceedings of the Seventh SIAM International Conference on Data Mining, April 26--28, 2007, Minneapolis, Minnesota, USA. SIAM, 443--448.
[7]
Isvani Inocencio Frías Blanco, José del Campo-Ávila, Gonzalo Ramos-Jiménez, Rafael Morales Bueno, Agustín Alejandro Ortiz Díaz, and Yailé Caballero Mota. 2015. Online and Non-Parametric Drift Detection Methods Based on Hoeffding's Bounds. IEEE Trans. Knowl. Data Eng. 27, 3 (2015), 810--823.
[8]
R. P. Jagadeesh Chandra Bose, Wil M. P. van der Aalst, Indre Zliobaite, and Mykola Pechenizkiy. 2011. Handling Concept Drift in Process Mining. In Advanced Information Systems Engineering - 23rd International Conference, CAiSE 2011, London, UK, June 20--24, 2011. Proceedings, Haralambos Mouratidis and Colette Rolland (Eds.). Springer, 391--405.
[9]
R. P. Jagadeesh Chandra Bose, Wil M. P. van der Aalst, Indre Zliobaite, and Mykola Pechenizkiy. 2014. Dealing With Concept Drifts in Process Mining. IEEE Trans. Neural Networks Learn. Syst. 25, 1 (2014), 154--171.
[10]
Melike Bozkaya, Joost Gabriels, and Jan Martijn van der Werf. 2009. Process diagnostics: a method based on process mining. In 2009 International Conference on Information, Process, and Knowledge Management. IEEE, 22--27.
[11]
Dominic Breuker, Martin Matzner, Patrick Delfmann, and Jörg Becker. 2016. Comprehensible Predictive Models for Business Processes. MIS Quarterly 40, 4 (2016), 1009--1034. https://www.jstor.org/stable/26629686
[12]
Tobias Brockhoff, Merih Seran Uysal, and Wil M. P. van der Aalst. 2020. Time-aware Concept Drift Detection Using the Earth Mover's Distance. In 2nd International Conference on Process Mining, ICPM 2020, Padua, Italy, October 4--9, 2020, Boudewijn F. van Dongen, Marco Montali, and Moe Thandar Wynn (Eds.). IEEE, 33--40.
[13]
Josep Carmona and Ricard Gavaldà. 2012. Online Techniques for Dealing with Concept Drift in Process Mining. In Advances in Intelligent Data Analysis XI - 11th International Symposium, IDA 2012, Helsinki, Finland, October 25--27, 2012. Proceedings, Jaakko Hollmén, Frank Klawonn, and Allan Tucker (Eds.). Springer, 90--102.
[14]
Josep Carmona, Boudewijn F. van Dongen, Andreas Solti, and Matthias Weidlich. 2018. Conformance Checking - Relating Processes and Models. Springer.
[15]
Paolo Ceravolo, Gabriel Marques Tavares, Sylvio Barbon Junior, and Ernesto Damiani. 2020. Evaluation Goals for Online Process Mining: a Concept Drift Perspective. IEEE Transactions on Services Computing (2020).
[16]
Alfonso E. Márquez Chamorro, Isabel A. Nepomuceno-Chamorro, Manuel Resinas, and Antonio Ruiz-Cortés. 2022. Updating Prediction Models for Predictive Process Monitoring. In Advanced Information Systems Engineering - 34th International Conference, CAiSE 2022, Leuven, Belgium, June 6--10, 2022, Proceedings, Xavier Franch, Geert Poels, Frederik Gailly, and Monique Snoeck (Eds.). Springer, 304--318.
[17]
Alfonso E. Márquez Chamorro, Isabel A. Nepomuceno-Chamorro, Manuel Resinas, and Antonio Ruiz-Cortés. 2022. Updating Prediction Models for Predictive Process Monitoring. In Advanced Information Systems Engineering - 34th International Conference, CAiSE 2022, Leuven, Belgium, June 6--10, 2022, Proceedings, Xavier Franch, Geert Poels, Frederik Gailly, and Monique Snoeck (Eds.). Springer, 304--318.
[18]
Lei Du, Qinbao Song, Lei Zhu, and Xiaoyan Zhu. 2015. A Selective Detector Ensemble for Concept Drift Detection. Comput. J. 58, 3 (2015), 457--471.
[19]
Marlon Dumas, Marcello La Rosa, Jan Mendling, and Hajo A. Reijers. 2018. Fundamentals of Business Process Management, Second Edition. Springer.
[20]
João Gama, Pedro Medas, Gladys Castillo, and Pedro Pereira Rodrigues. 2004. Learning with Drift Detection. In Advances in Artificial Intelligence - SBIA 2004, 17th Brazilian Symposium on Artificial Intelligence, São Luis, Maranhão, Brazil, September 29 - October 1, 2004, Proceedings, Ana L. C. Bazzan and Sofiane Labidi (Eds.). Springer, 286--295.
[21]
João Gama, Indrė Žliobaitė, Albert Bifet, Mykola Pechenizkiy, and Abdelhamid Bouchachia. 2014. A survey on concept drift adaptation. ACM computing surveys 46, 4 (2014), 1--37.
[22]
Marwan Hassani. 2019. Concept Drift Detection Of Event Streams Using An Adaptive Window. In Proceedings of the 33rd International ECMS Conference on Modelling and Simulation, ECMS 2019 Caserta, Italy, June 11--14, 2019, Mauro Iacono, Francesco Palmieri, Marco Gribaudo, and Massimo Ficco (Eds.). European Council for Modeling and Simulation, 230--239.
[23]
Bart Hompes, Joos C. A. M. Buijs, Wil M. P. van der Aalst, Prabhakar M. Dixit, and Hans Buurman. 2015. Detecting Change in Processes Using Comparative Trace Clustering. In Proceedings of the 5th International Symposium on Data-driven Process Discovery and Analysis (SIMPDA 2015), Vienna, Austria, December 9--11, 2015 (CEUR Workshop Proceedings), Paolo Ceravolo and Stefanie Rinderle-Ma (Eds.), Vol. 1527. CEUR-WS.org, 95--108. http://ceur-ws.org/Vol-1527/paper7.pdf
[24]
Angelo Impedovo, Paolo Mignone, Corrado Loglisci, and Michelangelo Ceci. 2020. Simultaneous Process Drift Detection and Characterization with Pattern-Based Change Detectors. In Discovery Science - 23rd International Conference, DS 2020, Thessaloniki, Greece, October 19--21, 2020, Proceedings, Annalisa Appice, Grigorios Tsoumakas, Yannis Manolopoulos, and Stan Matwin (Eds.). Springer, 451--467.
[25]
Daniel Kifer, Shai Ben-David, and Johannes Gehrke. 2004. Detecting Change in Data Streams. In (e)Proceedings of the Thirtieth International Conference on Very Large Data Bases, VLDB 2004, Toronto, Canada, August 31 - September 3 2004, Mario A. Nascimento, M. Tamer Özsu, Donald Kossmann, Renée J. Miller, José A. Blakeley, and K. Bernhard Schiefer (Eds.). Morgan Kaufmann, 180--191.
[26]
Wolfgang Kratsch, Jonas Manderscheid, Maximilian Röglinger, and Johannes Seyfried. 2021. Machine learning in business process monitoring: a comparison of deep learning and classical approaches used for outcome prediction. Business & Information Systems Engineering 63, 3 (2021), 261--276.
[27]
Geetika T. Lakshmanan, Paul T. Keyser, and Songyun Duan. 2011. Detecting changes in a semi-structured business process through spectral graph analysis. In 2011 IEEE 27th International Conference on Data Engineering Workshops. 255--260.
[28]
Sander J. J. Leemans, Dirk Fahland, and Wil M. P. van der Aalst. 2013. Discovering Block-Structured Process Models from Event Logs - A Constructive Approach. In Application and Theory of Petri Nets and Concurrency - 34th International Conference, PETRI NETS 2013, Milan, Italy, June 24--28, 2013. Proceedings. Springer.
[29]
Leilei Lin, Lijie Wen, Li Lin, Jisheng Pei, and Hedong Yang. 2020. LCDD: Detecting Business Process Drifts Based on Local Completeness. IEEE Transactions on Services Computing (2020), 1--1.
[30]
Na Liu, Jiwei Huang, and Lizhen Cui. 2018. A Framework for Online Process Concept Drift Detection from Event Streams. In 2018 IEEE International Conference on Services Computing, SCC 2018, San Francisco, CA, USA, July 2--7, 2018. IEEE, 105--112.
[31]
Rafael Lorenz, Julian Senoner, Wilfried Sihn, and Torbjørn H. Netland. 2021. Using process mining to improve productivity in make-to-stock manufacturing. Int. J. Prod. Res. 59, 16 (2021), 4869--4880.
[32]
Jie Lu, Anjin Liu, Fan Dong, Feng Gu, João Gama, and Guangquan Zhang. 2019. Learning under Concept Drift: A Review. IEEE Trans. Knowl. Data Eng. 31, 12 (2019), 2346--2363.
[33]
Daniela Luengo and Marcos Sepúlveda. 2011. Applying Clustering in Process Mining to Find Different Versions of a Business Process That Changes over Time. In Business Process Management Workshops - BPM 2011 International Workshops, Clermont-Ferrand, France, August 29, 2011, Revised Selected Papers, Part I, Florian Daniel, Kamel Barkaoui, and Schahram Dustdar (Eds.). Springer, 153--158.
[34]
Abderrahmane Maaradji, Marlon Dumas, Marcello La Rosa, and Alireza Ostovar. 2015. Fast and Accurate Business Process Drift Detection. In Business Process Management - 13th International Conference, BPM 2015, Innsbruck, Austria, August 31 - September 3, 2015, Proceedings, Hamid Reza Motahari-Nezhad, Jan Recker, and Matthias Weidlich (Eds.). Springer, 406--422.
[35]
Abderrahmane Maaradji, Marlon Dumas, Marcello La Rosa, and Alireza Ostovar. 2017. Detecting Sudden and Gradual Drifts in Business Processes from Execution Traces. IEEE Trans. Knowl. Data Eng. 29, 10 (2017), 2140--2154.
[36]
Fabrizio Maria Maggi, Chiara Di Francescomarino, Marlon Dumas, and Chiara Ghidini. 2014. Predictive Monitoring of Business Processes. In Advanced Information Systems Engineering - 26th International Conference, CAiSE 2014, Thessaloniki, Greece, June 16--20, 2014. Proceedings, Matthias Jarke, John Mylopoulos, Christoph Quix, Colette Rolland, Yannis Manolopoulos, Haralambos Mouratidis, and Jennifer Horkoff (Eds.). Springer, 457--472.
[37]
Marco Maisenbacher and Matthias Weidlich. 2017. Handling Concept Drift in Predictive Process Monitoring. In 2017 IEEE International Conference on Services Computing, SCC 2017, Honolulu, HI, USA, June 25--30, 2017, Xiaoqing (Frank) Liu and Umesh Bellur (Eds.). IEEE Computer Society, 1--8.
[38]
J. Martjushev, R. P. Jagadeesh Chandra Bose, and Wil M. P. van der Aalst. 2015. Change Point Detection and Dealing with Gradual and Multi-order Dynamics in Process Mining. In Perspectives in Business Informatics Research - 14th International Conference, BIR 2015, Tartu, Estonia, August 26--28, 2015, Proceedings, Raimundas Matulevicius and Marlon Dumas (Eds.). Springer, 161--178.
[39]
Nicolas Jashchenko Omori, Gabriel Marques Tavares, Paolo Ceravolo, and Sylvio Barbon Jr. 2019. Comparing Concept Drift Detection with Process Mining Tools. In Proceedings of the XV Brazilian Symposium on Information Systems, SBSI 2019, Aracaju, Brazil, May 20--24, 2019, Fábio Gomes Rocha, Igor Vasconcelos, Rodrigo Pereira dos Santos, Davi Viana, and Scheila de Avila e Silva (Eds.). ACM, 31:1--31:8.
[40]
Alireza Ostovar, Sander J. J. Leemans, and Marcello La Rosa. 2020. Robust Drift Characterization from Event Streams of Business Processes. ACM Trans. Knowl. Discov. Data 14, 3 (2020), 30:1--30:57.
[41]
Alireza Ostovar, Abderrahmane Maaradji, Marcello La Rosa, and Arthur H. M. ter Hofstede. 2017. Characterizing Drift from Event Streams of Business Processes. In Advanced Information Systems Engineering - 29th International Conference, CAiSE 2017, Essen, Germany, June 12--16, 2017, Proceedings, Eric Dubois and Klaus Pohl (Eds.). Springer, 210--228.
[42]
Alireza Ostovar, Abderrahmane Maaradji, Marcello La Rosa, Arthur H. M. ter Hofstede, and Boudewijn F. van Dongen. 2016. Detecting Drift from Event Streams of Unpredictable Business Processes. In Conceptual Modeling - 35th International Conference, ER 2016, Gifu, Japan, November 14--17, 2016, Proceedings, Isabelle Comyn-Wattiau, Katsumi Tanaka, Il-Yeol Song, Shuichiro Yamamoto, and Motoshi Saeki (Eds.). 330--346.
[43]
Gyunam Park and Minseok Song. 2020. Predicting performances in business processes using deep neural networks. Decis. Support Syst. 129 (2020).
[44]
Mirko Polato. 2017. Dataset belonging to the help desk log of an Italian Company. (7 2017).
[45]
Qinglin Qi and Fei Tao. 2018. Digital Twin and Big Data Towards Smart Manufacturing and Industry 4.0: 360 Degree Comparison. IEEE Access 6 (2018), 3585--3593.
[46]
Florian Richter and Thomas Seidl. 2017. TESSERACT: Time-Drifts in Event Streams Using Series of Evolving Rolling Averages of Completion Times. In Business Process Management - 15th International Conference, BPM 2017, Barcelona, Spain, September 10--15, 2017, Proceedings, Josep Carmona, Gregor Engels, and Akhil Kumar (Eds.). Springer, 289--305.
[47]
Williams Rizzi, Chiara Di Francescomarino, Chiara Ghidini, and Fabrizio Maria Maggi. 2022. How do I update my model? On the resilience of Predictive Process Monitoring models to change. Knowl. Inf. Syst. 64, 5 (2022), 1385--1416.
[48]
Denise Maria Vecino Sato, Sheila Cristiana De Freitas, Jean Paul Barddal, and Edson Emílio Scalabrin. 2022. A Survey on Concept Drift in Process Mining. ACM Comput. Surv. 54, 9 (2022), 189:1--189:38.
[49]
Jeffrey C Schlimmer and Richard H Granger. 1986. Beyond incremental processing: tracking concept drift. In AAAI. 502--507.
[50]
Alexander Seeliger, Timo Nolle, and Max Mühlhäuser. 2017. Detecting Concept Drift in Processes using Graph Metrics on Process Graphs. In Proceedings of the 9th Conference on Subject-oriented Business Process Management, S-BPM ONE 2017, Darmstadt, Germany, March 30--31, 2017, Max Mühlhäuser and Cornelia Zehbold (Eds.). ACM, 6. http://dl.acm.org/citation.cfm?id=3040566
[51]
Arik Senderovich, Matthias Weidlich, Liron Yedidsion, Avigdor Gal, Avishai Mandelbaum, Sarah Kadish, and Craig A Bunnell. 2016. Conformance checking and performance improvement in scheduled processes: A queueing-network perspective. Information Systems 62 (2016), 185--206.
[52]
Junming Shao, Zahra Ahmadi, and Stefan Kramer. 2014. Prototype-based learning on concept-drifting data streams. In The 20th ACM SIGKDD International Conference on Knowledge Discovery and Data Mining, KDD '14, New York, NY, USA - August 24 - 27, 2014, Sofus A. Macskassy, Claudia Perlich, Jure Leskovec, Wei Wang, and Rayid Ghani (Eds.). ACM, 412--421.
[53]
Padhraic Smyth and Rodney M. Goodman. 1991. Rule Induction Using Information Theory. In Knowledge Discovery in Databases, Gregory Piatetsky-Shapiro and William J. Frawley (Eds.). AAAI/MIT Press, 159--176.
[54]
Xiuyao Song, Mingxi Wu, Christopher M. Jermaine, and Sanjay Ranka. 2007. Statistical change detection for multi-dimensional data. In Proceedings of the 13th ACM SIGKDD International Conference on Knowledge Discovery and Data Mining, San Jose, California, USA, August 12--15, 2007, Pavel Berkhin, Rich Caruana, and Xindong Wu (Eds.). ACM, 667--676.
[55]
Ward Steeman. 2014. BPI Challenge 2013.
[56]
Florian Stertz and Stefanie Rinderle-Ma. 2018. Process Histories - Detecting and Representing Concept Drifts Based on Event Streams. In On the Move to Meaningful Internet Systems. OTM 2018 Conferences - Confederated International Conferences: CoopIS, C&TC, and ODBASE 2018, Valletta, Malta, October 22--26, 2018, Proceedings, Part I, Hervé Panetto, Christophe Debruyne, Henderik A. Proper, Claudio Agostino Ardagna, Dumitru Roman, and Robert Meersman (Eds.). Springer, 318--335.
[57]
Florian Stertz and Stefanie Rinderle-Ma. 2019. Detecting and Identifying Data Drifts in Process Event Streams Based on Process Histories. In Information Systems Engineering in Responsible Information Systems - CAiSE Forum 2019, Rome, Italy, June 3--7, 2019, Proceedings, Cinzia Cappiello and Marcela Ruiz (Eds.). Springer, 240--252.
[58]
Abhijit Suprem, Joy Arulraj, Calton Pu, and João Eduardo Ferreira. 2020. ODIN: Automated Drift Detection and Recovery in Video Analytics. Proc. VLDB Endow. 13, 11 (2020), 2453--2465. http://www.vldb.org/pvldb/vol13/p2453-suprem.pdf
[59]
Gabriel Marques Tavares, Paolo Ceravolo, Victor G. Turrisi da Costa, Ernesto Damiani, and Sylvio Barbon Junior. 2019. Overlapping Analytic Stages in Online Process Mining. In 2019 IEEE International Conference on Services Computing, SCC 2019, Milan, Italy, July 8--13, 2019, Elisa Bertino, Carl K. Chang, Peter Chen, Ernesto Damiani, Michael Goul, and Katsunori Oyama (Eds.). IEEE, 167--175.
[60]
Niek Tax, Ilya Verenich, Marcello La Rosa, and Marlon Dumas. 2017. Predictive Business Process Monitoring with LSTM Neural Networks. In Advanced Information Systems Engineering - 29th International Conference, CAiSE 2017, Essen, Germany, June 12--16, 2017, Proceedings. Springer, 477--492.
[61]
Manoj Kumar M. V., Likewin Thomas, and Annappa Basava. 2015. Capturing the Sudden Concept Drift in Process Mining. In Proceedings of the International Workshop on Algorithms & Theories for the Analysis of Event Data, ATAED 2015, Brussels, Belgium, June 22--23, 2015 (CEUR Workshop Proceedings), Wil M. P. van der Aalst, Robin Bergenthum, and Josep Carmona (Eds.), Vol. 1371. CEUR-WS.org, 132--143. http://ceur-ws.org/Vol-1371/paper11.pdf
[62]
Wil M. P. van der Aalst. 2016. Process mining: Data science in action. Springer.
[63]
Wil M. P. van der Aalst, T. Weijters, and L. Maruster. 2004. Workflow mining: discovering process models from event logs. IEEE Transactions on Knowledge and Data Engineering 16, 9 (2004), 1128--1142.
[64]
Wil M. P. van der Aalst et al. 2011. Process Mining Manifesto. In BPM Workshops. Springer, 169--194.
[65]
Boudewijn van Dongen. 2011. Real-life event logs - Hospital log. (3 2011).
[66]
Boudewijn van Dongen. 2015. BPI Challenge 2015.
[67]
Barbara Weber, Manfred Reichert, and Stefanie Rinderle-Ma. 2008. Change patterns and change support features - Enhancing flexibility in process-aware information systems. Data Knowl. Eng. 66, 3 (2008), 438--466.
[68]
A. Weijters, Wil M. P. van der Aalst, and Alves Medeiros. 2006. Process Mining with the Heuristics Miner-algorithm. CIRP Annals - Manufacturing Technology 166 (01 2006).
[69]
Sven Weinzierl, Sandra Zilker, Matthias Stierle, Martin Matzner, and Gyunam Park. 2020. From predictive to prescriptive process monitoring: Recommending the next best actions instead of calculating the next most likely events. In Wirtschaftsinformatik (Zentrale Tracks). 364--368.
[70]
Anton Yeshchenko, Claudio Di Ciccio, Jan Mendling, and Artem Polyvyanyy. 2019. Comprehensive Process Drift Detection with Visual Analytics. In ER. 119--135.
[71]
Anton Yeshchenko, Claudio Di Ciccio, Jan Mendling, and Artem Polyvyanyy. 2021. Visual drift detection for sequence data analysis of business processes. IEEE Transactions on Visualization and Computer Graphics (2021).
[72]
Canbin Zheng, Lijie Wen, and Jianmin Wang. 2017. Detecting Process Concept Drifts from Event Logs. In On the Move to Meaningful Internet Systems. OTM 2017 Conferences - Confederated International Conferences: CoopIS, C&TC, and ODBASE 2017, Rhodes, Greece, October 23--27, 2017, Proceedings, Part I, Hervé Panetto, Christophe Debruyne, Walid Gaaloul, Mike P. Papazoglou, Adrian Paschke, Claudio Agostino Ardagna, and Robert Meersman (Eds.). Springer, 524--542.

Cited By

View all
  • (2024)MDD: Process Drift Detection in Event Logs Integrating Multiple Perspectives2024 IEEE International Conference on Web Services (ICWS)10.1109/ICWS62655.2024.00135(1125-1134)Online publication date: 7-Jul-2024
  • (2024)Privacy-Aware Analysis based on Data Series2024 IEEE 40th International Conference on Data Engineering (ICDE)10.1109/ICDE60146.2024.00406(5365-5370)Online publication date: 13-May-2024
  • (2024)Looking for Change: A Computer Vision Approach for Concept Drift Detection in Process MiningBusiness Process Management10.1007/978-3-031-70396-6_16(273-290)Online publication date: 2-Sep-2024

Recommendations

Comments

Please enable JavaScript to view thecomments powered by Disqus.

Information & Contributors

Information

Published In

cover image Proceedings of the VLDB Endowment
Proceedings of the VLDB Endowment  Volume 16, Issue 8
April 2023
257 pages
ISSN:2150-8097
Issue’s Table of Contents

Publisher

VLDB Endowment

Publication History

Published: 01 April 2023
Published in PVLDB Volume 16, Issue 8

Check for updates

Badges

Qualifiers

  • Research-article

Contributors

Other Metrics

Bibliometrics & Citations

Bibliometrics

Article Metrics

  • Downloads (Last 12 months)110
  • Downloads (Last 6 weeks)12
Reflects downloads up to 16 Nov 2024

Other Metrics

Citations

Cited By

View all
  • (2024)MDD: Process Drift Detection in Event Logs Integrating Multiple Perspectives2024 IEEE International Conference on Web Services (ICWS)10.1109/ICWS62655.2024.00135(1125-1134)Online publication date: 7-Jul-2024
  • (2024)Privacy-Aware Analysis based on Data Series2024 IEEE 40th International Conference on Data Engineering (ICDE)10.1109/ICDE60146.2024.00406(5365-5370)Online publication date: 13-May-2024
  • (2024)Looking for Change: A Computer Vision Approach for Concept Drift Detection in Process MiningBusiness Process Management10.1007/978-3-031-70396-6_16(273-290)Online publication date: 2-Sep-2024

View Options

Login options

Full Access

View options

PDF

View or Download as a PDF file.

PDF

eReader

View online with eReader.

eReader

Media

Figures

Other

Tables

Share

Share

Share this Publication link

Share on social media