A dynamic preference recommendation model based on spatiotemporal knowledge graphs

Abstract Recommender systems are of increasing importance owing to the growth of social networks and the complexity of user behavior, and cater to the personalized needs of users. To improve recommendation performance, several methods have emerged and made a combination of knowledge graphs and recom...

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Main Authors: Xinyu Fan, Yinqin Ji, Bei Hui
Format: Article
Language:English
Published: Springer 2024-11-01
Series:Complex & Intelligent Systems
Subjects:
Online Access:https://doi.org/10.1007/s40747-024-01658-y
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author Xinyu Fan
Yinqin Ji
Bei Hui
author_facet Xinyu Fan
Yinqin Ji
Bei Hui
author_sort Xinyu Fan
collection DOAJ
description Abstract Recommender systems are of increasing importance owing to the growth of social networks and the complexity of user behavior, and cater to the personalized needs of users. To improve recommendation performance, several methods have emerged and made a combination of knowledge graphs and recommender systems. However, the majority of approaches faces issues like overlooking spatiotemporal features and lacking dynamic modeling. The former restricts the flexibility of recommendations, while the latter renders recommendations unable to adapt to the changing interests of users. To overcome these limitations, a novel dynamic preference recommendation model based on spatiotemporal knowledge graphs (DRSKG), which captures preferences dynamically, is proposed in this paper. Constructed by knowledge graphs, the model integrates spatiotemporal features and takes into account the dynamic preferences of users across various temporal, spatial, and situational contexts. Therefore, DRSKG not only describes the spatiotemporal characteristics of user behaviors more accurately but also models the evolution of dynamic preferences in spatiotemporal changes. Massive experiments demonstrate that the proposed model exhibits significant recommendation enhancement compared with the traditional one, achieving up to 7% and 5% improvements in terms of Precision and Recall metrics, respectively.
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institution Kabale University
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spelling doaj-art-d001f36a945f40e4b5290e86878bd5832025-02-02T12:49:28ZengSpringerComplex & Intelligent Systems2199-45362198-60532024-11-0111111410.1007/s40747-024-01658-yA dynamic preference recommendation model based on spatiotemporal knowledge graphsXinyu Fan0Yinqin Ji1Bei Hui2School of Information and Software Engineering, University of Electronic Science and Technology of ChinaSchool of Information and Software Engineering, University of Electronic Science and Technology of ChinaSchool of Information and Software Engineering, University of Electronic Science and Technology of ChinaAbstract Recommender systems are of increasing importance owing to the growth of social networks and the complexity of user behavior, and cater to the personalized needs of users. To improve recommendation performance, several methods have emerged and made a combination of knowledge graphs and recommender systems. However, the majority of approaches faces issues like overlooking spatiotemporal features and lacking dynamic modeling. The former restricts the flexibility of recommendations, while the latter renders recommendations unable to adapt to the changing interests of users. To overcome these limitations, a novel dynamic preference recommendation model based on spatiotemporal knowledge graphs (DRSKG), which captures preferences dynamically, is proposed in this paper. Constructed by knowledge graphs, the model integrates spatiotemporal features and takes into account the dynamic preferences of users across various temporal, spatial, and situational contexts. Therefore, DRSKG not only describes the spatiotemporal characteristics of user behaviors more accurately but also models the evolution of dynamic preferences in spatiotemporal changes. Massive experiments demonstrate that the proposed model exhibits significant recommendation enhancement compared with the traditional one, achieving up to 7% and 5% improvements in terms of Precision and Recall metrics, respectively.https://doi.org/10.1007/s40747-024-01658-yDynamic preferenceSpatiotemporalKnowledge graphRecommendation system
spellingShingle Xinyu Fan
Yinqin Ji
Bei Hui
A dynamic preference recommendation model based on spatiotemporal knowledge graphs
Complex & Intelligent Systems
Dynamic preference
Spatiotemporal
Knowledge graph
Recommendation system
title A dynamic preference recommendation model based on spatiotemporal knowledge graphs
title_full A dynamic preference recommendation model based on spatiotemporal knowledge graphs
title_fullStr A dynamic preference recommendation model based on spatiotemporal knowledge graphs
title_full_unstemmed A dynamic preference recommendation model based on spatiotemporal knowledge graphs
title_short A dynamic preference recommendation model based on spatiotemporal knowledge graphs
title_sort dynamic preference recommendation model based on spatiotemporal knowledge graphs
topic Dynamic preference
Spatiotemporal
Knowledge graph
Recommendation system
url https://doi.org/10.1007/s40747-024-01658-y
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AT xinyufan dynamicpreferencerecommendationmodelbasedonspatiotemporalknowledgegraphs
AT yinqinji dynamicpreferencerecommendationmodelbasedonspatiotemporalknowledgegraphs
AT beihui dynamicpreferencerecommendationmodelbasedonspatiotemporalknowledgegraphs