4.7 Article

Adapting topic map and social influence to the personalized hybrid recommender system

Journal

INFORMATION SCIENCES
Volume 575, Issue -, Pages 762-778

Publisher

ELSEVIER SCIENCE INC
DOI: 10.1016/j.ins.2018.04.015

Keywords

Hybrid recommender system; Cold start; Social network; Ontology; Sentiment analysis

Funding

  1. Taiwan Ministry of Science and Technology [MOST 103-2410-H-006-055-MY3]

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A recommender system helps users effectively obtain accurate information, but often faces issues like the cold-start problem and low model scalability. To mitigate these problems, a hybrid recommender system can be used, and extracted features can be integrated into topics to reduce dimensionality.
A recommender system utilizes information filtering techniques to help users obtain accurate information effectively and efficiently. The existing recommender systems, however, recommend items based on the overall ratings or the click-through rate, and emotions expressed by users are neglected. Conversely, the cold-start problem and low model scalability are the two main problems with recommender systems. The cold-start problem is encountered when the system lacks initial rating. Low model scalability indicates that a model is incapable of coping with high-dimensional data. These two problems may mislead the recommender system, and thus, users will not be satisfied with the recommended items. A hybrid recommender system is proposed to mitigate the negative effects caused by these problems. Additionally, ontologies are applied to integrate the extracted features into topics to reduce dimensionality. Topics mentioned in the items are displayed in the form of a topic map, and users can refer to these similar items for further information. (c) 2018 Elsevier Inc. All rights reserved.

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