4.6 Article

Novel Semantic-Based Probabilistic Context Aware Approach for Situations Enrichment and Adaptation

期刊

APPLIED SCIENCES-BASEL
卷 12, 期 2, 页码 -

出版社

MDPI
DOI: 10.3390/app12020732

关键词

ontology; heterogeneous connected objects; situations rules enrichment; situations rules adaptation; situations rules learning

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This paper proposes a recommendation method based on semantic and probabilistic situations, using the ontology approach and Bayesian classifier to predict user context for improved service recommendation accuracy and relevance. By utilizing four probability-based context rule situation items, the method calculates similarity through weighted linear combination to identify relevant user situations. Additionally, context parameters of current devices are used to ensure adaptive service recommendation. Experimental results demonstrate enhanced accuracy and efficiency compared to existing recommendation approaches.
This paper aims at ensuring an efficient recommendation. It proposes a new context-aware semantic-based probabilistic situations injection and adaptation using an ontology approach and Bayesian-classifier. The idea is to predict the relevant situations for recommending the right services. Indeed, situations are correlated with the user's context. It can, therefore, be considered in designing a recommendation approach to enhance the relevancy by reducing the execution time. The proposed solution in which four probability-based-context rule situation items (user's location and time, user's role, their preferences and experiences) are chosen as inputs to predict user's situations. Subsequently, the weighted linear combination is applied to calculate the similarity of rule items. The higher scores between the selected items are used to identify the relevant user's situations. Three context parameters (CPU speed, sensor availability and RAM size) of the current devices are used to ensure adaptive service recommendation. Experimental results show that the proposed approach enhances accuracy rate with a high number of situations rules. A comparison with existing recommendation approaches shows that the proposed approach is more efficient and decreases the execution time.

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