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An Explainable Decision Support System for Predictive Process Analytics

Authors :
Galanti, Riccardo
de Leoni, Massimiliano
Monaro, Merylin
Navarin, Nicolò
Marazzi, Alan
Di Stasi, Brigida
Maldera, Stéphanie
Publication Year :
2022

Abstract

Predictive Process Analytics is becoming an essential aid for organizations, providing online operational support of their processes. However, process stakeholders need to be provided with an explanation of the reasons why a given process execution is predicted to behave in a certain way. Otherwise, they will be unlikely to trust the predictive monitoring technology and, hence, adopt it. This paper proposes a predictive analytics framework that is also equipped with explanation capabilities based on the game theory of Shapley Values. The framework has been implemented in the IBM Process Mining suite and commercialized for business users. The framework has been tested on real-life event data to assess the quality of the predictions and the corresponding evaluations. In particular, a user evaluation has been performed in order to understand if the explanations provided by the system were intelligible to process stakeholders.<br />Comment: arXiv admin note: text overlap with arXiv:2008.01807

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2207.12782
Document Type :
Working Paper