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Open AccessJournal ArticleDOI

A Review of Content-Based and Context-Based Recommendation Systems

TLDR
This study has concluded that by some means, this approach works similarly as a content-based recommender system since by taking the gain of a semantic approach, the system can also recommend items according to the user’s interests.
Abstract
In our work, we have presented two widely used recommendation systems. We have presented a context-aware recommender system to filter the items associated with user’s interests coupled with a context-based recommender system to prescribe those items. In this study, context-aware recommender systems perceive the user’s location, time, and company. The context-based recommender system retrieves patterns from World Wide Web-based on the user’s past interactions and provides future news recommendations. We have presented different techniques to support media recommendations for smartphones, to create a framework for context-aware, to filter E-learning content, and to deliver convenient news to the user. To achieve this goal, we have used content-based, collaborative filtering, a hybrid recommender system, and implemented a Web ontology language (OWL). We have also used the Resource Description Framework (RDF), JAVA, machine learning, semantic mapping rules, and natural ontology languages that suggest user items related to the search. In our work, we have used E-paper to provide users with the required news. After applying the semantic reasoning approach, we have concluded that by some means, this approach works similarly as a content-based recommender system since by taking the gain of a semantic approach, we can also recommend items according to the user’s interests. In a content-based recommender system, the system provides additional options or results that rely on the user’s ratings, appraisals, and interests.

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Citations
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Journal ArticleDOI

Computational Model of Recommender System Intervention

TL;DR: In this article , the authors employ a computational model to depict factors that lead to recommender system rejection by users and how these factors can be enhanced to achieve successful recommender systems interventions.
Journal ArticleDOI

Recommendation of Online Business English Learning Resources Integrating Attention Mechanism and Collaborative Filtering Model

TL;DR: This paper proposes a recommendation algorithm for business English online learning resources based on an attention mechanism and collaborative filtering model and the results at Precision@K and Recall@K prove that the proposed model has better recommendation ability.
Journal ArticleDOI

A cross-platform recommendation system from Facebook to Instagram

TL;DR: In this article , a cross-platform recommendation system that recommends the most suitable public Instagram accounts to Facebook users was proposed. But the authors only used a similarity matching mechanism for recommending the most appropriate Instagram accounts.
Journal ArticleDOI

Data mining-based recommendation system using social networks—an analytical study

TL;DR: In this paper , a systematic literature review was performed to evaluate studies that relate to data mining-based recommendation systems using social networks from 2011 to 2021 and open up a path for scientific investigations to enhance the development of recommendation systems in a social network.
Proceedings ArticleDOI

Scientific Paper Recommendation System

TL;DR: This paper proposed an end-to-end content-based scientific paper recommendation system capable of recommending research papers from the abstract or the context of the research paper for which we want to find the recommendation.
References
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Journal ArticleDOI

Ontological user profiling in recommender systems

TL;DR: Ontological inference is shown to improve user profiling, external ontological knowledge used to successfully bootstrap a recommender system and profile visualization employed to improve profiling accuracy are shown.
Proceedings ArticleDOI

MovieLens unplugged: experiences with an occasionally connected recommender system

TL;DR: The results of a nine month field study show that although there are several challenges to overcome, mobile recommender systems have the potential to provide value to their users today.
Proceedings ArticleDOI

Linked open data to support content-based recommender systems

TL;DR: This paper implemented a content-based RS that leverages the data available within Linked Open Data datasets (in particular DBpedia, Freebase and LinkedMDB) in order to recommend movies to the end users.
Proceedings ArticleDOI

Capturing knowledge of user preferences: ontologies in recommender systems

TL;DR: In this article, the authors explore the acquisition of user profiles by unobtrusive monitoring of browsing behaviour and application of supervised machine-learning techniques coupled with an ontological representation to extract user preferences.
Journal ArticleDOI

Supporting Context-Aware Media Recommendations for Smart Phones

TL;DR: A hybrid recommendation approach to synergize content-based, Bayesian-classifier, and rule-based methods for media recommendation, adaptation, and delivery for smart phones is proposed.
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