2018
DOI: 10.1007/s12599-018-0551-3
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A Novel Business Process Prediction Model Using a Deep Learning Method

Abstract: The ability to proactively monitor business processes is a main competitive differentiator for firms. Process execution logs generated by process aware information systems help to make process specific predictions for enabling a proactive situational awareness. The goal of the proposed approach is to predict the next process event from the completed activities of the running process instance, based on the execution log data from previously completed process instances. By predicting process events, companies ca… Show more

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Cited by 72 publications
(54 citation statements)
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“…Metzger and Neubauer (2018) used Matthews correlation coefficient instead of accuracy because the accuracy is susceptible to imbalanced data, but they do not fit their training to this insight. Mehdiyev et al (2020) compared their aggregated prediction results on balanced and imbalanced training data and report a steep increase in performance, when the training data is balanced. The most commonly used datasets Helpdesk and BPIC 12 are heavily imbalanced.…”
Section: The Issue With Imbalanced Class Frequenciesmentioning
confidence: 99%
See 1 more Smart Citation
“…Metzger and Neubauer (2018) used Matthews correlation coefficient instead of accuracy because the accuracy is susceptible to imbalanced data, but they do not fit their training to this insight. Mehdiyev et al (2020) compared their aggregated prediction results on balanced and imbalanced training data and report a steep increase in performance, when the training data is balanced. The most commonly used datasets Helpdesk and BPIC 12 are heavily imbalanced.…”
Section: The Issue With Imbalanced Class Frequenciesmentioning
confidence: 99%
“…andPasquadibisceglie et al (2019) solved this restriction by padding all shorter prefixes to the maximum possible length Ezpeleta et al (2018). trained a separate model for multiple prefix lengths andMehdiyev et al (2020) used n-grams as inputs to model the temporal dependencies while preserving a fixed input size. Theis and Darabi (2019) mined a petri net for the event logs and use this information to model the control-flow within an FFNN input.…”
mentioning
confidence: 99%
“…al. determine modeling monitoring of business processes as an important competitive advantage of a company in the system of its strategic planning [8].…”
Section: Analysis Of the Latest Publicationsmentioning
confidence: 99%
“…All of the metrics are used to compare against the earlier-introduced next event prediction techniques. The subsequent definitions of metrics are based on [18], [63], [64].…”
Section: B Metricsmentioning
confidence: 99%