Abstract

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.

Highlights

  • Nowadays, many smart applications such as smart health, smart home and smart city [1,2] require efficient situations enrichment and adaptive service delivery through recommendation systems

  • The goal of this experiment is to analyze which recommendation criteria make the have carried out several performance experiments using the proposed approach by obsystem more accurate when we rely on preference, rule items content or both

  • We proposed and evaluated a dynamic and modular methodology for classification and recommendations of user’s situation rules for adaptable contextaware mobile applications

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Summary

Introduction

Many smart applications such as smart health, smart home and smart city [1,2] require efficient situations enrichment and adaptive service delivery through recommendation systems. The recommendation is the most helpful way to assist users in their everyday activities. The proposed solutions for situations enrichment and service delivery in such applications require low execution time and high accuracy level to meet the user’s requirements in a large number of available rules [3]. Ontologies are widely standard models and supporting techniques for improving the recommendation of services and quality of life by detecting the relevant situations of a user and easy access to their related services [4]. High accuracy and fastness are the most desired targets for any recommendation ontology-based approach

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