Article ID Journal Published Year Pages File Type
386262 Expert Systems with Applications 2014 21 Pages PDF
Abstract

•We introduce a novel method for learning and modelling contextual user profiles.•We develop methods for inferring hidden semantic information from user profiles.•We introduce an approach to providing contextual recommendation services.•We present a domain-independent context-aware personalization system.

As users may have different needs in different situations and contexts, it is increasingly important to consider user context data when filtering information. In the field of web personalization and recommender systems, most of the studies have focused on the process of modelling user profiles and the personalization process in order to provide personalized services to the user, but not on contextualized services. Rather limited attention has been paid to investigate how to discover, model, exploit and integrate context information in personalization systems in a generic way. In this paper, we aim at providing a novel model to build, exploit and integrate context information with a web personalization system. A context-aware personalization system (CAPS) is developed which is able to model and build contextual and personalized ontological user profiles based on the user’s interests and context information. These profiles are then exploited in order to infer and provide contextual recommendations to users. The methods and system developed are evaluated through a user study which shows that considering context information in web personalization systems can provide more effective personalization services and offer better recommendations to users.

Related Topics
Physical Sciences and Engineering Computer Science Artificial Intelligence
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