Demystifying Noise and Outliers in Event Logs: Review and Future Directions

[1]  Shivani Gupta,et al.  Dealing with Noise Problem in Machine Learning Data-sets: A Systematic Review , 2019, Procedia Computer Science.

[2]  Francisco Herrera,et al.  Tackling the problem of classification with noisy data using Multiple Classifier Systems: Analysis of the performance and robustness , 2013, Inf. Sci..

[3]  Manuel Mucientes,et al.  Simplification of Complex Process Models by Abstracting Infrequent Behaviour , 2019, ICSOC.

[4]  Agnes Koschmider,et al.  On the Contextualization of Event-Activity Mappings , 2018, Business Process Management Workshops.

[5]  Wil M. P. van der Aalst,et al.  Process Mining , 2016, Springer Berlin Heidelberg.

[6]  Marcello La Rosa,et al.  Detection and removal of infrequent behavior from event streams of business processes , 2020, Inf. Syst..

[7]  Moe Thandar Wynn,et al.  A Contextual Approach to Detecting Synonymous and Polluted Activity Labels in Process Event Logs , 2019, OTM Conferences.

[8]  Stefanie Rinderle-Ma,et al.  Mining association rules for anomaly detection in dynamic process runtime behavior and explaining the root cause to users , 2020, Inf. Syst..

[9]  Hajo A. Reijers,et al.  Data-driven process discovery , 2017 .

[10]  Manuel Mucientes,et al.  Discovering Infrequent Behavioral Patterns in Process Models , 2017, BPM.

[11]  Wil M. P. van der Aalst,et al.  Improving Process Discovery Results by Filtering Outliers Using Conditional Behavioural Probabilities , 2017, Business Process Management Workshops.

[12]  Moe Thandar Wynn,et al.  Detection and Interactive Repair of Event Ordering Imperfection in Process Logs , 2018, CAiSE.

[13]  Xingquan Zhu,et al.  Class Noise vs. Attribute Noise: A Quantitative Study , 2003, Artificial Intelligence Review.

[14]  Sander J. J. Leemans,et al.  Discovering Block-Structured Process Models from Incomplete Event Logs , 2014, Petri Nets.

[15]  Wil M. P. van der Aalst,et al.  Repairing Outlier Behaviour in Event Logs , 2018, BIS.

[16]  Max Mühlhäuser,et al.  Unsupervised Anomaly Detection in Noisy Business Process Event Logs Using Denoising Autoencoders , 2016, DS.

[17]  VARUN CHANDOLA,et al.  Anomaly detection: A survey , 2009, CSUR.

[18]  Riyanarto Sarno,et al.  Anomaly detection in business processes using process mining and fuzzy association rule learning , 2020, Journal of Big Data.

[19]  Erik Poppe,et al.  Towards Event Log Querying for Data Quality - Let's Start with Detecting Log Imperfections , 2018, OTM Conferences.

[20]  A practitioner’s guide to process mining: Limitations of the directly-follows graph , 2019, Procedia Computer Science.

[21]  Akhil Kumar,et al.  Process mining on noisy logs - Can log sanitization help to improve performance? , 2015, Decis. Support Syst..

[22]  Wil M. P. van der Aalst,et al.  Applying Sequence Mining for Outlier Detection in Process Mining , 2018, OTM Conferences.

[23]  Keith Ord,et al.  Outliers in statistical data: V. Barnett and T. Lewis, 1994, 3rd edition, (John Wiley & Sons, Chichester), 584 pp., [UK pound]55.00, ISBN 0-471-93094-6 , 1996 .

[24]  Marcello La Rosa,et al.  Filtering Spurious Events from Event Streams of Business Processes , 2018, CAiSE.

[25]  Marco Comuzzi,et al.  Event Log Reconstruction Using Autoencoders , 2018, ICSOC Workshops.

[26]  Luigi Pontieri,et al.  Outlier Detection Techniques for Process Mining Applications , 2008, ISMIS.

[27]  Max Mühlhäuser,et al.  BINet: Multivariate Business Process Anomaly Detection Using Deep Learning , 2018, BPM.

[28]  Wil M. P. van der Aalst,et al.  Discovering more precise process models from event logs by filtering out chaotic activities , 2017, Journal of Intelligent Information Systems.

[29]  Stefanie Rinderle-Ma,et al.  Multi Instance Anomaly Detection in Business Process Executions , 2017, BPM.

[30]  Antonio Martinez-Millana,et al.  Interactive Data Cleaning for Process Mining: A Case Study of an Outpatient Clinic's Appointment System , 2019, Business Process Management Workshops.

[31]  Massimiliano de Leoni,et al.  Event abstraction in process mining: literature review and taxonomy , 2020, Granular Computing.