Not logged in.

Contribution Details

Type Conference or Workshop Paper
Scope Discipline-based scholarship
Published in Proceedings No
Title Direct Interruptablity Prediction and Scenario-based Evaluation of Wearable Devices: Towards Reliable Interruptability Predictions
Organization Unit
Authors
  • Abraham Bernstein
  • Peter Vorburger
  • Patrice Egger
Item Subtype Original Work
Refereed Yes
Status Published in final form
Event Title First International Workshop on Managing Context Information in Mobile and Pervasive Environments MCMP-05
Abstract Text In this paper we introduce the approach of direct interruptability inference from accelerometer and audio data and show that it provides highly accurate and robust predictions. Furthermore, we argue that scenarios are central for evaluating the performance of interruptability predicting devices and prove it on our setup. We also demonstrate that scenarios provide the foundation for avoiding misleading results, assessing the results’ generalizability, and provide the basis for a stratified scenario-based learning model, which greatly speeds-up the training of such devices.
PDF File Download
Export BibTeX
EP3 XML (ZORA)