Abstract
'Understanding context is vital' [1] and 'context is key' [2] signal the key interest in the context detection eld. One important challenge in this area is automatically detecting the user's task because once it is known it is possible to support her better. In this paper we propose an ontologybased user interaction context model (UICO) that enhances the performance of task detection on the user's computer desktop. Starting from low-level contextual attention metadata captured from the user's desktop, we utilize rule-based, information extraction and machine learning approaches to automatically populate this user interaction context model. Furthermore we automatically derive relations between the model's entities and automatically detect the user's task. We present evaluation results of a large-scale user study we carried out in a knowledge-intensive business environment, which support our approach.
Original language | English |
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Title of host publication | Proceedings of the 1st Workshop on Context, Information and Ontologies, CIAO 2009 |
Place of Publication | New York, NY |
Number of pages | 10 |
DOIs | |
Publication status | Published - 1 Jun 2009 |
Event | 1st Workshop on Context, Information and Ontologies, CIAO 2009 - Heraklion, Greece Duration: 1 Jun 2009 → 1 Jun 2009 |
Conference
Conference | 1st Workshop on Context, Information and Ontologies, CIAO 2009 |
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Country/Territory | Greece |
City | Heraklion |
Period | 1/06/09 → 1/06/09 |
Keywords
- automatic task detection
- context ontology
- machine learning
- user context detection
- user context model