33rd International Conference on Advanced Information Systems Engineering Melbourne, Australia, 28 June – 2 July 2021 Proceedings of Doctoral Consortium Papers Edited by John Krogstie Norwegian University of Science and Technology, Norway Chun Ouyang Queensland University of Technology, Australia Jolita Ralyté University of Geneva, Switzerland CAiSE 2021 Doctoral Consortium Papers Proceedings This volume of CEUR-WS Proceedings contains 11 Doctoral Consortium papers presented at the 33rd International Conference on Advanced Information Systems Engineering (CAiSE 2021). The conference was held (virtually) in Melbourne, Australia, 28 June – 2 July 2021. Copyright © 2021 for the individual papers by the papers’ authors. Copyright 2021 for the volume as a collection by its editors. This volume and its papers are published under the Creative Commons License Attribution 4.0 International (CC BY 4.0). Credits: Photo by Denise Jans on Unsplash CEUR-WS.org, ISSN 1613-0073 Preface This volume of CEUR-WS proceedings includes papers of the Doctoral Consortium held in conjunction with the 33rd International Conference on Advanced Information Systems Engineering – CAiSE 2021. This edition of CAiSE was held in Melbourne, Australia, from 28th of June to 2nd of July. However, due to the pandemic outbreak, the conference and all collocated events took place virtually. CAiSE has a long tradition of hosting a Doctoral Consortium. The ambition is to increase the participation of PhD students working in the field of information systems engineering, and to offer them the opportunity to present and discuss their research with senior researchers and to get fruitful feedback and advice on their research studies. The Doctoral Consortium is also an occasion to interact with other doctoral students, exchange ideas and experiences, discuss concerns about research topics, supervision, and other career-related issues. The CAiSE 2021 Doctoral Consortium received 15 submissions and 11 of them have been selected to be presented during the event and to be included in these proceedings. Each paper was evaluated by two senior researchers – mentors of the Doctoral Consortium and received detailed and constructive comments for improving the paper before including it in the proceedings. Presentations were organized in three sessions, during which the mentors provided additional comments and recommendations to the students for their further advancement in their doctoral research project. The rest of the audience was also very supportive and active in providing ideas and comments to the students. We would like to thank all the people involved in the organization of the event: the CAiSE 2021 organizers, who supported the event; the mentors, who provided the reviews and recommendations to the doctoral students; and the students who accepted to share with us their research ideas and progress and participated in the CAiSE 2021 Doctoral Consortium. June 2021 Jolita Ralyté John Krogstie Chun Ouyang Doctoral Consortium Organization Doctoral Consortium Chairs John Krogstie Norwegian University of Science and Technology, Norway Chun Ouyang Queensland University of Technology, Australia Jolita Ralyté University of Geneva, Switzerland Doctoral Consortium Mentors Xavier Franch Universitat Politècnica de Catalunya, Spain Renata Guizzardi University of Twente, The Netherlands Massimo Mecella Sapienza University of Rome, Italy Andreas L. Opdahl University of Bergen, Norway Oscar Pastor Lopez Universitat Politècnica de València, Spain Geert Poels Ghent University, Belgium Pnina Soffer University of Haifa, Israel Janis Stirna Stockholm University, Sweden Barbara Weber University of St. Gallen, Switzerland Jian Yang, Macquarie University, Australia Table of Contents Health, Privacy and Cyber-Physical Systems Decision-support Simulation of Patient Treatment Process 1 Camelia Maleki Normative and Empirical Evaluation of Privacy Utility Trade-off in Healthcare 11 Syeda Amna Sohail Automated GDPR-Compliance in Requirements Engineering 21 Abdel-Jaouad Aberkane Flexible Multi-aspect Model Integration for Cyber-Physical Production Systems 31 Engineering Felix Rinker Mining, Prediction and Recommendation Discovering Organizational Knowledge via Process Mining 41 Jing Yang Design and Evaluation of Explainable Methods for Predictive Process Analytics 49 Mythreyi Velmurugan Data-Driven Strategy Maps: A Hybrid Approach to Strategic and Performance 59 Management Combining Hard Data and Experts' Knowledge Lhorie Pirnay An Intention Mining Approach using Ontology for Contextual Recommendations 69 Ramona Elali Software and Systems Engineering From Strategy to Code: A Model-Driven Software Production Method 79 Rene Noel Information Sharing for Customized Dynamic Visual Analytics: A Framework 89 Alireza Khakpour Situation-specific Development of Business Models for Services in Software 99 Ecosystems Sebastian Gottschalk