Abstract
AbstractDuring the last years, a number of studies have experimented with applying process mining (PM) techniques to smart spaces data. The general goal has been to automatically model human routines as if they were business processes. However, applying process-oriented techniques to smart spaces data comes with its own set of challenges. This paper surveys existing approaches that apply PM to smart spaces and analyses how they deal with the following challenges identified in the literature: choosing a modelling formalism for human behaviour; bridging the abstraction gap between sensor and event logs; and segmenting logs in traces. The added value of this article lies in providing the research community with a common ground for some important challenges that exist in this field and their respective solutions, and to assist further research efforts by outlining opportunities for future work.
Publisher
Springer Nature Switzerland
Reference40 articles.
1. Aztiria, A., Izaguirre, A., Basagoiti, R., Augusto, J.C., Cook, D.J.: Automatic modeling of frequent user behaviours in intelligent environments. In: 2010 IE, pp. 7–12 (2010)
2. Cameranesi, M., Diamantini, C., Mircoli, A., Potena, D., Storti, E.: Extraction of user daily behavior from home sensors through process discovery. IEEE IoT J. 7(9), 8440–8450 (2020)
3. Lecture Notes in Business Information Processing;M Cameranesi,2018
4. Lecture Notes in Computer Science;BD Carolis,2014
5. Carolis, B.D., Ferilli, S., Redavid, D.: Incremental learning of daily routines as workflows in a smart home environment. ACM TiiS 4(4), 1–23 (2015)
Cited by
5 articles.
订阅此论文施引文献
订阅此论文施引文献,注册后可以免费订阅5篇论文的施引文献,订阅后可以查看论文全部施引文献