Research Article
Smartphone-Based Estimation of a User Being in Company or Alone Based on Place, Time, and Activity
@INPROCEEDINGS{10.1007/978-3-319-90740-6_5, author={Anja Exler and Marcel Braith and Kristina Mincheva and Andrea Schankin and Michael Beigl}, title={Smartphone-Based Estimation of a User Being in Company or Alone Based on Place, Time, and Activity}, proceedings={Mobile Computing, Applications, and Services. 9th International Conference, MobiCASE 2018, Osaka, Japan, February 28 -- March 2, 2018, Proceedings}, proceedings_a={MOBICASE}, year={2018}, month={5}, keywords={Context recognition Place type Social activity}, doi={10.1007/978-3-319-90740-6_5} }
- Anja Exler
Marcel Braith
Kristina Mincheva
Andrea Schankin
Michael Beigl
Year: 2018
Smartphone-Based Estimation of a User Being in Company or Alone Based on Place, Time, and Activity
MOBICASE
Springer
DOI: 10.1007/978-3-319-90740-6_5
Abstract
Whether a person is is an important indicator for several research fields such as monitoring a patient’s mental health states in clinical psychology or interruptibility detection in experience sampling. Traditionally, social activity is assessed using self-report questionnaires. However, this approach is obtrusive. The best solution would be an automatic assessment. Smartphones are suitable sensing systems for this task. In this paper, we investigate relations between being and place types. First, we present results of an online survey taken by 68 persons. Within the survey, we assessed how likely users are to be at specific place types provided by the Google Places API. We identified that places such as night club, bar, movie theatre, and restaurant are primarily visited . Places such as post office, gym, bank, or library are visited rather . Some place types are undecidable and require additional context information. As a next step, we ran an in-field user study to gather enriched real-world data. We logged temporal features, user activity, place type, and self-reported company indicators as ground truth. We gathered data of 24 participants over a period of three weeks. Using information gain and , we identified that and correlate with being with statistical significance shown by Cramér’s . Using machine learning, we trained different classifiers to predict being . We achieved an accuracy of up to 91.1%. Our approach is a first step towards an automatic assessment of being as it is more accurate than pure guessing. We propose to enrich it with further context information such as transportation mode or a more accurate activity classifier.