scispace - formally typeset
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.

read more

Content maybe subject to copyright    Report

Citations
More filters
Journal ArticleDOI

A systematic review of ontology use in E-Learning recommender system

TL;DR: In this article , the authors examined the development and evaluation of ontology-based recommender systems and discussed technical ontology use and the recommendation process and found that the most popular recommendation item is the learning object.
Journal ArticleDOI

Temporal sensitive heterogeneous graph neural network for news recommendation

TL;DR: Wang et al. as mentioned in this paper proposed a time sensitive heterogeneous graph neural network for news recommendation, which consists of two subnetworks: one subnet utilizes convolutional neural network and improved LSTM to learn a user's stay period on the page and click sequence characteristics as the temporal dimension feature.
Journal ArticleDOI

Relevancy or Diversity?: Recommendation Strategy Based on the Degree of Multi-Context Use of News Feed Users

TL;DR: Zhang et al. as discussed by the authors found that the degree of multi-context use is a key boundary for the effectiveness of a location-based recommendation method, which may trigger users perceived privacy threat, which will reduce their satisfaction and participation intention.
Journal ArticleDOI

Develop Academic Question Recommender Based on Bayesian Network for Personalizing Student’s Practice

TL;DR: An academic question recommender based on Bayesian network is developed for personalizing practice question sequence with tracing mastery level of student on knowledge components and provides instructor with tools for building knowledge component network and setting question of course.
References
More filters
Journal ArticleDOI

Mining Smart Learning Analytics Data Using Ensemble Classifiers

TL;DR: In this study, a SLA dataset was explored and advanced ensemble techniques were applied for the classification task, and Bagging Tree and Stacking Classifiers have outperformed other classical techniques with an accuracy of 79% and 78% respectively.
Proceedings ArticleDOI

Risk Factors Identification of Malignant Mesothelioma: A Data Mining Based Approach

TL;DR: Strong associations of disease's factors; asbestos exposure, erythrocyte sedimentation rate, duration of time for asbestos exposure and Pleural to serum LDH ratio determined via Apriori algorithm are determined.
Journal ArticleDOI

Ontological content‐based filtering for personalised newspapers: A method and its evaluation

TL;DR: A new ontological content‐based filtering method for ranking the relevance of items for readers of news items, and its evaluation in an experimental setting is described.
Proceedings ArticleDOI

Classification of Human Face: Asian and Non-Asian People

TL;DR: A CNN based model is proposed to create a system that classifies facial images based on a variety of different facial attributes and classified into two distinct categories.
Proceedings ArticleDOI

Applications of user and context-aware recommendations using ontologies

TL;DR: This paper presents the concepts of ontology-based personalisation for the recommendation of contents adapted to the user and his context through two use cases in the television and commerce domains which have been prototyped in the framework of different European research projects.
Related Papers (5)