Context-prediction performance by a dynamic Bayesian network: Emphasis on location prediction in ubiquitous decision support environment

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摘要

Ubiquitous decision support systems require more intelligent mechanism in which more timely and accurate decision support is available. However, conventional context-aware systems, which have been popular in the ubiquitous decision support systems field, cannot provide such agile and proactive decision support. To fill this research void, this paper proposes a new concept of context prediction mechanism by which the ubiquitous decision support devices are able to predict users’ future contexts in advance, and provide more timely and proactive decision support that users would be satisfied much more. Especially, location prediction is useful because ubiquitous decision support systems could dynamically adapt their decision support contents for a user based on a user’s future location. In this sense, as an alternative for the inference engine mechanism to be used in the ubiquitous decision support systems capable of context-prediction, we propose an inductive approach to recognizing a user’s location by learning a dynamic Bayesian network model. The dynamic Bayesian network model has been evaluated with a set of contextual data from undergraduate students. The evaluation result suggests that a dynamic Bayesian network model offers significant predictive power in the location prediction. Besides, we found that the dynamic Bayesian network model has a great potential for the future types of ubiquitous decision support systems.

论文关键词:Dynamic Bayesian networks,Context prediction,Ubiquitous computing,Ubiquitous decision support system,Bayesian network,Naïve Bayesian network,Tree augmented naïve Bayesian network

论文评审过程:Available online 25 October 2011.

论文官网地址:https://doi.org/10.1016/j.eswa.2011.10.026