Predictive Compliance Monitoring in Process-Aware Information Systems: State of the Art, Functionalities, Research Directions
暂无分享,去创建一个
[1] S. Rinderle-Ma,et al. SensorStream: An XES Extension for Enriching Event Logs with IoT-Sensor Data , 2022, ArXiv.
[2] Wil M.P. van der Aalst,et al. Detecting Context-Aware Deviations in Process Executions , 2022, BPM.
[3] Antonio Ruiz-Cortés,et al. A Mashup-Based Framework for Business Process Compliance Checking , 2022, IEEE Transactions on Services Computing.
[4] Digvijay Puri,et al. Business Intelligence Tools for Dashboard Development , 2022, 2022 3rd International Conference on Intelligent Engineering and Management (ICIEM).
[5] M. Reichert,et al. Explainability of Predictive Process Monitoring Results: Can You See My Data Issues? , 2022, Applied Sciences.
[6] Marco Comuzzi,et al. Keeping our rivers clean: Information-theoretic online anomaly detection for streaming business process events , 2022, Inf. Syst..
[7] Marco Comuzzi,et al. A diagnostic framework for imbalanced classification in business process predictive monitoring , 2021, Expert Syst. Appl..
[8] Mohsen Kahani,et al. HAM-Net: Predictive Business Process Monitoring with a hierarchical attention mechanism , 2021, Knowl. Based Syst..
[9] Manfred Reichert,et al. Verifying Compliance in Process Choreographies: Foundations, Algorithms, and Implementation , 2021, Inf. Syst..
[10] M. Dumas,et al. Encoding resource experience for predictive process monitoring , 2021, Decis. Support Syst..
[11] Fabrizio Maria Maggi,et al. How do I update my model? On the resilience of Predictive Process Monitoring models to change , 2021, Knowledge and Information Systems.
[12] Marlon Dumas,et al. Prescriptive Process Monitoring Under Resource Constraints: A Causal Inference Approach , 2021, ICPM Workshops.
[13] Wil M.P. van der Aalst. Federated Process Mining: Exploiting Event Data Across Organizational Boundaries , 2021, 2021 IEEE International Conference on Smart Data Services (SMDS).
[14] Marlon Dumas,et al. Prescriptive Process Monitoring for Cost-Aware Cycle Time Reduction , 2021, 2021 3rd International Conference on Process Mining (ICPM).
[15] Wil M.P. van der Aalst,et al. Text-Aware Predictive Monitoring of Business Processes , 2021, BIS.
[16] Stefan Jablonski,et al. Evaluating Predictive Business Process Monitoring Approaches on Small Event Logs , 2021, QUATIC.
[17] S. Rinderle-Ma,et al. Generating Reliable Process Event Streams and Time Series Data based on Neural Networks , 2021, BPMDS/EMMSAD@CAiSE.
[18] Johannes Lahann,et al. A systematic literature review on state-of-the-art deep learning methods for process prediction , 2021, Artificial Intelligence Review.
[19] Donato Malerba,et al. A Multi-View Deep Learning Approach for Predictive Business Process Monitoring , 2021, IEEE Transactions on Services Computing.
[20] Yehuda Lindell,et al. Secure multiparty computation , 2020, Commun. ACM.
[21] Marco F. Huber,et al. A Survey on the Explainability of Supervised Machine Learning , 2020, J. Artif. Intell. Res..
[22] Stefanie Rinderle-Ma,et al. Defining Instance Spanning Constraint Patterns for Business Processes Based on Proclets , 2020, ER.
[23] Stefan Schönig,et al. Leveraging Small Sample Learning for Business Process Management , 2020, Inf. Softw. Technol..
[24] Eva L. Klijn,et al. Identifying and Reducing Errors in Remaining Time Prediction due to Inter-Case Dynamics , 2020, 2020 2nd International Conference on Process Mining (ICPM).
[25] Manuel Lama,et al. Deep Learning for Predictive Business Process Monitoring: Review and Benchmark , 2020, IEEE Transactions on Services Computing.
[26] Peter Fettke,et al. Local Post-Hoc Explanations for Predictive Process Monitoring in Manufacturing , 2020, ECIS.
[27] Fabrizio Maria Maggi,et al. Explainability in Predictive Process Monitoring: When Understanding Helps Improving , 2020, BPM.
[28] Stefanie Rinderle-Ma,et al. Analyzing Process Concept Drifts Based on Sensor Event Streams During Runtime , 2020, BPM.
[29] Alexander Palm,et al. Triggering Proactive Business Process Adaptations via Online Reinforcement Learning , 2020, BPM.
[30] P. Fettke,et al. Explainable Artificial Intelligence for Process Mining: A General Overview and Application of a Novel Local Explanation Approach for Predictive Process Monitoring , 2020, Studies in Computational Intelligence.
[31] Kate Revoredo,et al. Cause vs. Effect in Context-Sensitive Prediction of Business Process Instances , 2020, Inf. Syst..
[32] Martin Matzner,et al. Explainable predictive business process monitoring using gated graph neural networks , 2020, J. Decis. Syst..
[33] Jens Brunk,et al. Structuring Business Process Context Information for Process Monitoring and Prediction , 2020, 2020 IEEE 22nd Conference on Business Informatics (CBI).
[34] 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..
[35] Stefanie Rinderle-Ma,et al. Discovering instance and process spanning constraints from process execution logs , 2020, Inf. Syst..
[36] Renuka Sindhgatta,et al. Exploring Interpretability for Predictive Process Analytics , 2019, ICSOC.
[37] Detlef D. Nauck,et al. A Generic Model for End State Prediction of Business Processes Towards Target Compliance , 2019, SGAI Conf..
[38] Hamid Hassanpour,et al. Real-time Prediction and Synchronization of Business Process Instances using Data and Control Perspective , 2019 .
[39] Marco Montali,et al. Compliance Monitoring of Multi-Perspective Declarative Process Models , 2019, 2019 IEEE 23rd International Enterprise Distributed Object Computing Conference (EDOC).
[40] Guido Governatori,et al. Checking Regulatory Compliance: Will We Live to See It? , 2019, BPM.
[41] Bayu Adhi Tama,et al. An empirical comparison of classification techniques for next event prediction using business process event logs , 2019, Expert Syst. Appl..
[42] Oscar González Rojas,et al. Learning Accurate LSTM Models of Business Processes , 2019, BPM.
[43] Fabrizio Maria Maggi,et al. From knowledge-driven to data-driven inter-case feature encoding in predictive process monitoring , 2019, Inf. Syst..
[44] Moe Thandar Wynn,et al. Responsible Process Mining - A Data Quality Perspective , 2019, BPM.
[45] Stefan Wagner,et al. On Observability and Monitoring of Distributed Systems: An Industry Interview Study , 2019, ICSOC.
[46] Xinhong Chen,et al. Event modeling and mining: a long journey toward explainable events , 2019, The VLDB Journal.
[47] Jan Vanthienen,et al. Towards a comprehensive understanding of the context concepts in context-aware business processes , 2019, S-BPM ONE '19.
[48] Stefanie Rinderle-Ma,et al. Compliance Monitoring on Process Event Streams from Multiple Sources , 2019, 2019 International Conference on Process Mining (ICPM).
[49] Stefanie Rinderle-Ma,et al. Deriving and Combining Mixed Graphs from Regulatory Documents Based on Constraint Relations , 2019, CAiSE.
[50] Matthias Weidlich,et al. Fire now, fire later: alarm-based systems for prescriptive process monitoring , 2019, Knowl. Inf. Syst..
[51] Michael Felderer,et al. Specification-driven predictive business process monitoring , 2019, Software and Systems Modeling.
[52] Manuel Resinas,et al. A hybrid reliability metric for SLA predictive monitoring , 2019, SAC.
[53] Stefanie Rinderle-Ma,et al. Collection and Elicitation of Business Process Compliance Patterns with Focus on Data Aspects , 2019, Bus. Inf. Syst. Eng..
[54] Manuel Resinas,et al. Does Your Accurate Process Predictive Monitoring Model Give Reliable Predictions? , 2018, ICSOC Workshops.
[55] Stefanie Rinderle-Ma,et al. Untangling the GDPR Using ConRelMiner , 2018, ArXiv.
[56] Antonio Ruiz-Cortés,et al. Predictive Monitoring of Business Processes: A Survey , 2018, IEEE Transactions on Services Computing.
[57] Xianfu Chen,et al. Deep Learning with Long Short-Term Memory for Time Series Prediction , 2018, IEEE Communications Magazine.
[58] Stefanie Rinderle-Ma,et al. Probability Based Heuristic for Predictive Business Process Monitoring , 2018, OTM Conferences.
[59] Flávia Maria Santoro,et al. Context-Aware Predictive Process Monitoring: The Impact of News Sentiment , 2018, OTM Conferences.
[60] Moe Thandar Wynn,et al. Are we done with business process compliance: state of the art and challenges ahead , 2018, Knowledge and Information Systems.
[61] Michael Rosemann,et al. Process Forecasting: Towards Proactive Business Process Management , 2018, BPM.
[62] Peter Fettke,et al. A Novel Business Process Prediction Model Using a Deep Learning Method , 2018, Business & Information Systems Engineering.
[63] Francesco Folino,et al. A Predictive Learning Framework for Monitoring Aggregated Performance Indicators over Business Process Events , 2018, IDEAS.
[64] Ingo Weber,et al. Towards Reliable Predictive Process Monitoring , 2018, CAiSE Forum.
[65] Mohand-Said Hacid,et al. Temporal Event based Compliance Monitoring , 2018, 2018 International Conference on Advances in Computing and Communication Engineering (ICACCE).
[66] Theodoros Rekatsinas,et al. Data Integration and Machine Learning: A Natural Synergy , 2018, Proc. VLDB Endow..
[67] M. Dumas,et al. Survey and Cross-benchmark Comparison of Remaining Time Prediction Methods in Business Process Monitoring , 2018, ACM Trans. Intell. Syst. Technol..
[68] Fabrizio Maria Maggi,et al. Genetic algorithms for hyperparameter optimization in predictive business process monitoring , 2018, Inf. Syst..
[69] Paola Mello,et al. A distributed approach to compliance monitoring of business process event streams , 2018, Future Gener. Comput. Syst..
[70] Fabrizio Maria Maggi,et al. Predictive Process Monitoring Methods: Which One Suits Me Best? , 2018, BPM.
[71] Luciano Baresi,et al. Multi-party business process compliance monitoring through IoT-enabled artifacts , 2018, Inf. Syst..
[72] A. Sperduti,et al. Time and activity sequence prediction of business process instances , 2018, Computing.
[73] Stefanie Rinderle-Ma,et al. Event-based Failure Prediction in Distributed Business Processes , 2017, Inf. Syst..
[74] Stefanie Rinderle-Ma,et al. Discovering Instance-Spanning Constraints from Process Execution Logs Based on Classification Techniques , 2017, 2017 IEEE 21st International Enterprise Distributed Object Computing Conference (EDOC).
[75] Fabrizio Maria Maggi,et al. Intra and Inter-case Features in Predictive Process Monitoring: A Tale of Two Dimensions , 2017, BPM.
[76] Fabrizio Maria Maggi,et al. An Eye into the Future: Leveraging A-priori Knowledge in Predictive Business Process Monitoring , 2017, BPM.
[77] Meena Belwal,et al. Performance dashboard: Cutting-edge business intelligence and data visualization , 2017, 2017 International Conference On Smart Technologies For Smart Nation (SmartTechCon).
[78] Qiang Yang,et al. A Survey on Multi-Task Learning , 2017, IEEE Transactions on Knowledge and Data Engineering.
[79] Hoang Nguyen,et al. White-box prediction of process performance indicators via flow analysis , 2017, ICSSP.
[80] Christoph H. Lampert,et al. Zero-Shot Learning—A Comprehensive Evaluation of the Good, the Bad and the Ugly , 2017, IEEE Transactions on Pattern Analysis and Machine Intelligence.
[81] Marco Comuzzi,et al. Alignment of process compliance and monitoring requirements in dynamic business collaborations , 2017, Enterp. Inf. Syst..
[82] Matthias Weidlich,et al. Handling Concept Drift in Predictive Process Monitoring , 2017, 2017 IEEE International Conference on Services Computing (SCC).
[83] Oleg Svatos,et al. Requirements for Business Process Legal Compliance Monitoring , 2017 .
[84] Claudio Di Ciccio,et al. Blockchains for Business Process Management - Challenges and Opportunities , 2017, ACM Trans. Manag. Inf. Syst..
[85] Zaiwen Feng,et al. bpCMon: A Rule-Based Monitoring Framework for Business Processes Compliance , 2017, Int. J. Web Serv. Res..
[86] Akhil Kumar,et al. A framework for visually monitoring business process compliance , 2017, Inf. Syst..
[87] Barbara Paech,et al. Integrating business process simulation and information system simulation for performance prediction , 2017, Software & Systems Modeling.
[88] Jana-Rebecca Rehse,et al. Predicting process behaviour using deep learning , 2016, Decis. Support Syst..
[89] Jörg Becker,et al. Comprehensible Predictive Models for Business Processes , 2016, MIS Q..
[90] Fabrizio Maria Maggi,et al. Predictive Business Process Monitoring with Structured and Unstructured Data , 2016, BPM.
[91] Stefanie Rinderle-Ma,et al. Classification and Formalization of Instance-Spanning Constraints in Process-Driven Applications , 2016, BPM.
[92] Raffaele Conforti,et al. PRISM - A Predictive Risk Monitoring Approach for Business Processes , 2016, BPM.
[93] Eugenio Cesario,et al. A Cloud-Based Prediction Framework for Analyzing Business Process Performances , 2016, CD-ARES.
[94] Francesco Folino,et al. A multi-view multi-dimensional ensemble learning approach to mining business process deviances , 2016, 2016 International Joint Conference on Neural Networks (IJCNN).
[95] Stefanie Rinderle-Ma,et al. Collecting Examples for Instance-Spanning Constraints , 2016, ArXiv.
[96] Wil M. P. van der Aalst,et al. A general process mining framework for correlating, predicting and clustering dynamic behavior based on event logs , 2016, Inf. Syst..
[97] Alessandro Sperduti,et al. Time and activity sequence prediction of business process instances , 2016, Computing.
[98] Sherif Sakr,et al. Runtime self-monitoring approach of business process compliance in cloud environments , 2015, Cluster Computing.
[99] Mathias Weske,et al. Prediction of business process durations using non-Markovian stochastic Petri nets , 2015, Inf. Syst..
[100] Marco Montali,et al. Compliance monitoring in business processes: Functionalities, application, and tool-support , 2015, Inf. Syst..
[101] Matthias Weidlich,et al. Queue mining for delay prediction in multi-class service processes , 2015, Inf. Syst..
[102] Francesco Folino,et al. A Prediction Framework for Proactively Monitoring Aggregate Process-Performance Indicators , 2015, 2015 IEEE 19th International Enterprise Distributed Object Computing Conference.
[103] Quan Z. Sheng,et al. A Framework Towards Model Driven Business Process Compliance and Monitoring , 2015, 2015 IEEE 19th International Enterprise Distributed Object Computing Workshop.
[104] Stefanie Rinderle-Ma,et al. Fundamentals of Business Intelligence , 2015, Data-Centric Systems and Applications.
[105] Fabrizio Maria Maggi,et al. Clustering-Based Predictive Process Monitoring , 2015, IEEE Transactions on Services Computing.
[106] Sherif Sakr,et al. Compliance Monitoring as a Service: Requirements, Architecture and Implementation , 2015, 2015 International Conference on Cloud Computing (ICCC).
[107] Klaus Pohl,et al. Comparing and Combining Predictive Business Process Monitoring Techniques , 2015, IEEE Transactions on Systems, Man, and Cybernetics: Systems.
[108] Wil M. P. van der Aalst,et al. A recommendation system for predicting risks across multiple business process instances , 2015, Decis. Support Syst..
[109] Stefanie Rinderle-Ma,et al. Flexibility Requirements in Real-World Process Scenarios and Prototypical Realization in the Care Domain , 2014, OTM Workshops.
[110] Michelangelo Ceci,et al. Completion Time and Next Activity Prediction of Processes Using Sequential Pattern Mining , 2014, Discovery Science.
[111] Jan Mendling,et al. Predictive Task Monitoring for Business Processes , 2014, BPM.
[112] Jan Martijn E. M. van der Werf,et al. Online Compliance Monitoring of Service Landscapes , 2014, Business Process Management Workshops.
[113] G. Gigerenzer,et al. Risk, Uncertainty, and Heuristics , 2014 .
[114] Fabrizio Maria Maggi,et al. Predictive Monitoring of Business Processes , 2013, CAiSE.
[115] Gregorio Díaz,et al. Contract Compliance Monitoring of Web Services , 2013, ESOCC.
[116] Marco Montali,et al. A Framework for the Systematic Comparison and Evaluation of Compliance Monitoring Approaches , 2013, 2013 17th IEEE International Enterprise Distributed Object Computing Conference.
[117] Francesco Folino,et al. A Data-Driven Prediction Framework for Analyzing and Monitoring Business Process Performances , 2013, ICEIS.
[118] Schahram Dustdar,et al. Data-driven and automated prediction of service level agreement violations in service compositions , 2013, Distributed and Parallel Databases.
[119] Francesco Folino,et al. Discovering Context-Aware Models for Predicting Business Process Performances , 2012, OTM Conferences.
[120] Peter Dadam,et al. On enabling integrated process compliance with semantic constraints in process management systems , 2012, Inf. Syst. Frontiers.
[121] Dragan Ivanovic,et al. Constraint-Based Runtime Prediction of SLA Violations in Service Orchestrations , 2011, ICSOC.
[122] Peter Dadam,et al. Monitoring Business Process Compliance Using Compliance Rule Graphs , 2011, OTM Conferences.
[123] Henry Hoffmann,et al. Managing performance vs. accuracy trade-offs with loop perforation , 2011, ESEC/FSE '11.
[124] Wil M. P. van der Aalst,et al. Time prediction based on process mining , 2011, Inf. Syst..
[125] Schahram Dustdar,et al. Monitoring, Prediction and Prevention of SLA Violations in Composite Services , 2010, 2010 IEEE International Conference on Web Services.
[126] Fabio Casati,et al. Analyzing Compliance of Service-Based Business Processes for Root-Cause Analysis and Prediction , 2010, ICWE Workshops.
[127] Fabio Casati,et al. On the Design of Compliance Governance Dashboards for Effective Compliance and Audit Management , 2009, ICSOC/ServiceWave Workshops.
[128] Linh Thao Ly,et al. On enabling integrated process compliance with semantic constraints in process management systems , 2009, Information Systems Frontiers.
[129] Wil M. P. van der Aalst,et al. DECLARE: Full Support for Loosely-Structured Processes , 2007, 11th IEEE International Enterprise Distributed Object Computing Conference (EDOC 2007).
[130] Luís Ferreira Pires,et al. Situation Specification and Realization in Rule-Based Context-Aware Applications , 2007, DAIS.
[131] Pearl Brereton,et al. Lessons from applying the systematic literature review process within the software engineering domain , 2007, J. Syst. Softw..
[132] Wayne W. Eckerson. Performance Dashboards: Measuring, Monitoring, and Managing Your Business , 2005 .
[133] A. Kakabadse,et al. Outsourcing: Current and future trends , 2005 .
[134] Fabio Casati,et al. A Comprehensive and Automated Approach to Intelligent Business Processes Execution Analysis , 2004, Distributed and Parallel Databases.
[135] S. Rinderle-Ma,et al. Decision Mining with Time Series Data Based on Automatic Feature Generation , 2022, CAiSE.
[136] Amolkirat Singh Mangat,et al. Next-Activity Prediction for Non-stationary Processes with Unseen Data Variability , 2022, EDOC.
[137] Alessandro Gianola,et al. Conformance Checking with Uncertainty via SMT , 2022, BPM.
[138] Cinzia Cappiello,et al. Assessing and improving measurability of process performance indicators based on quality of logs , 2022, Inf. Syst..
[139] Stephen Pauwels,et al. Incremental Predictive Process Monitoring: The Next Activity Case , 2021, BPM.
[140] T. Chaussalet,et al. Comparative analysis of clustering-based remaining-time predictive process monitoring approaches , 2021, Int. J. Bus. Process. Integr. Manag..
[141] S. M. Isa,et al. PROCESS MINING IN GOVERNANCE, RISK MANAGEMENT, COMPLIANCE (GRC), AND AUDITING: A SYSTEMATIC LITERATURE REVIEW , 2021 .
[142] Stefanie Rinderle-Ma,et al. Evaluating Compliance State Visualizations for Multiple Process Models and Instances , 2021, BPM.
[143] Kai Heinrich,et al. Process data properties matter: Introducing gated convolutional neural networks (GCNN) and key-value-predict attention networks (KVP) for next event prediction with deep learning , 2021, Decis. Support Syst..
[144] Félix Cuadrado,et al. Business Process Event Prediction Through Scalable Online Learning , 2021, IEEE Access.
[145] Patrick Delfmann,et al. Applied Predictive Process Monitoring and Hyper Parameter Optimization in Camunda , 2021, CAiSE Forum.
[146] M. Comuzzi,et al. Stability Metrics for Enhancing the Evaluation of Outcome-Based Business Process Predictive Monitoring , 2021, IEEE Access.
[147] S. Rinderle-Ma,et al. Assessing the Impact of Context Data on Process Outcomes During Runtime , 2021, Service-Oriented Computing.
[148] Livio Robaldo,et al. Large-scale Legal Reasoning with Rules and Databases , 2021, FLAP.
[149] Stefan Jablonski,et al. Cost-Sensitive Predictive Business Process Monitoring , 2021, ADBIS.
[150] Jörg Becker,et al. Bringing Light Into the Darkness - A Systematic Literature Review on Explainable Predictive Business Process Monitoring Techniques , 2021, ECIS.
[151] Martin Matzner,et al. Predictive Business Process Deviation Monitoring , 2021, ECIS.
[152] Wil M.P. van der Aalst,et al. Remaining Time Prediction for Processes with Inter-case Dynamics , 2021, ICPM Workshops.
[153] Jens Brunk,et al. A Framework of Business Process Monitoring and Prediction Techniques , 2021, Lecture Notes in Information Systems and Organisation.
[154] Alfonso Castro,et al. An Ontological-Based Model to Data Governance for Big Data , 2021, IEEE Access.
[155] Jian Cao,et al. Interval-Based Remaining Time Prediction for Business Processes , 2021, ICSOC.
[156] Wil M. P. van der Aalst,et al. OCEL: A Standard for Object-Centric Event Logs , 2021, ADBIS.
[157] Florian Spree. Predictive Process Monitoring: A Use-Case-Driven Literature Review , 2020, EMISA Forum.
[158] Sheetal Rathi,et al. Comprehensive Survey on Deep Learning Approaches in Predictive Business Process Monitoring , 2020 .
[159] Fabrizio Maria Maggi,et al. Explainable Predictive Process Monitoring , 2020, 2020 2nd International Conference on Process Mining (ICPM).
[160] Antonio Ruiz-Cortés,et al. Context-Aware Process Performance Indicator Prediction , 2020, IEEE Access.
[161] Renata Medeiros de Carvalho,et al. An Approach for Workflow Improvement based on Outcome and Time Remaining Prediction , 2019, MODELSWARD.
[162] Manuel Lama,et al. A Vector-Based Classification Approach for Remaining Time Prediction in Business Processes , 2019, IEEE Access.
[163] Tomislav Maksimovic,et al. Bankaufsichtliche Anforderungen an die IT (BAIT) , 2019 .
[164] Ahmed Awad,et al. Enabling Compliance Monitoring for Process Execution Engines , 2017, RADAR+EMISA@CAiSE.
[165] Sherif Sakr,et al. An Anti-Pattern-based Runtime Business Process Compliance Monitoring Framework , 2016 .
[166] Luigi Coppolino,et al. Runtime Model Checking for SLA Compliance Monitoring and QoS Prediction , 2015, J. Wirel. Mob. Networks Ubiquitous Comput. Dependable Appl..
[167] Fabrizio Maria Maggi,et al. Enabling Process Innovation via Deviance Mining and Predictive Monitoring , 2015, BPM.
[168] Stefanie Rinderle-Ma,et al. ACaPlan - Adaptive Care Planning , 2015, BPM.
[169] A. H. M. Shamsuzzoha,et al. Virtual Enterprise Process Monitoring: An Approach towards Predictive Industrial Maintenance , 2014, ICSEng.
[170] Francesco Folino,et al. A Data-adaptive Trace Abstraction Approach to the Prediction of Business Process Performances , 2013, ICEIS.
[171] Geetika T. Lakshmanan,et al. A markov prediction model for data-driven semi-structured business processes , 2013, Knowledge and Information Systems.
[172] Wil M.P. van der Aalst,et al. Process Mining Put into Context , 2012, IEEE Internet Computing.
[173] Stefanie Rinderle-Ma,et al. On Utilizing Web Service Equivalence for Supporting the Composition Life Cycle , 2011, Int. J. Web Serv. Res..
[174] B. Pernici. Monitoring , 2008, Encyclopedia of GIS.
[175] James J. Thomas,et al. Defining Insight for Visual Analytics , 2009, IEEE Computer Graphics and Applications.
[176] Wei-Min Shen,et al. Data Preprocessing and Intelligent Data Analysis , 1997, Intell. Data Anal..
[177] M. Leyer,et al. Conceptualisation of Contextual Factors for Business Process Performance , 2022 .