Entity Footprinting: Modeling Contextual User States via Digital Activity Monitoring

Author:

R. Yousefi Zeinab1ORCID,Vuong Tung2ORCID,AlGhossein Marie2ORCID,Ruotsalo Tuukka3ORCID,Jaccuci Giulio2ORCID,Kaski Samuel4ORCID

Affiliation:

1. Aalto University, Helsinki, Finland

2. University of Helsinki, Helsinki, Finland

3. LUT University, Lappeenranta, Finland and University of Copenhagen, Kobenhavn, Denmark

4. Aalto University, Helsinki, Finland and University of Manchester, Manchester, UK

Abstract

Our digital life consists of activities that are organized around tasks and exhibit different user states in the digital contexts around these activities. Previous works have shown that digital activity monitoring can be used to predict entities that users will need to perform digital tasks. There have been methods developed to automatically detect the tasks of a user. However, these studies typically support only specific applications and tasks, and relatively little research has been conducted on real-life digital activities. This article introduces user state modeling and prediction with contextual information captured as entities, recorded from real-world digital user behavior, called entity footprinting —a system that records users’ digital activities on their screens and proactively provides useful entities across application boundaries without requiring explicit query formulation. Our methodology is to detect contextual user states using latent representations of entities occurring in digital activities. Using topic models and recurrent neural networks, the model learns the latent representation of concurrent entities and their sequential relationships. We report a field study in which the digital activities of 13 people were recorded continuously for 14 days. The model learned from this data is used to (1) predict contextual user states and (2) predict relevant entities for the detected states. The results show improved user state detection accuracy and entity prediction performance compared to static, heuristic, and basic topic models. Our findings have implications for the design of proactive recommendation systems that can implicitly infer users’ contextual state by monitoring users’ digital activities and proactively recommending the right information at the right time.

Publisher

Association for Computing Machinery (ACM)

Reference77 articles.

1. Seyed Ali Bahrainian, Fattane Zarrinkalam, Ida Mele, and Fabio Crestani. 2019. Predicting the topic of your next query for just-in-time IR. In Proceedings of the European Conference on Information Retrieval. 261–275. 10.1007/978-3-030-15712-8_17

2. Victoria Bellotti and J. D. Thornton. 2006. Managing activities with TVACTA: TaskVista and activity-centered task assistant. In Proceedings of the SIGIR Workshop on Personal Information Management. 8–11.

3. Latent Dirichlet allocation;Blei David M.;Journal of Machine Learning Research,2003

4. Oliver Brdiczka, Norman Makoto Su, and James Bo Begole. 2010. Temporal task footprinting: Identifying routine tasks by their temporal patterns. In Proceedings of the 15th International Conference on Intelligent User Interfaces. 281–284. 10.1145/1719970.1720011

5. Jay Budzik and Kristian J. Hammond. 2000. User interactions with everyday applications as context for just-in-time information access. In Proceedings of the 5th International Conference on Intelligent User Interfaces. 44–51. 10.1145/325737.325776

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