Intelligent Recommendation Algorithm Combining RNN and Knowledge Graph

With the continuous application and development of big data and algorithm technology, intelligent recommendation algorithms are gradually affecting all aspects of people’s daily life. The impact of smart recommendation algorithm has both advantages and disadvantages; it can facilitate people’s life,...

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Main Authors: Fengsheng Zeng, Qin Wang
Format: Article
Language:English
Published: Wiley 2022-01-01
Series:Journal of Applied Mathematics
Online Access:http://dx.doi.org/10.1155/2022/7323560
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author Fengsheng Zeng
Qin Wang
author_facet Fengsheng Zeng
Qin Wang
author_sort Fengsheng Zeng
collection DOAJ
description With the continuous application and development of big data and algorithm technology, intelligent recommendation algorithms are gradually affecting all aspects of people’s daily life. The impact of smart recommendation algorithm has both advantages and disadvantages; it can facilitate people’s life, but also exists at the same time the invasion of privacy, information cocoon, and other problems. How to optimize intelligent recommendation algorithms to serve the society more safely and efficiently becomes a problem that needs to be solved nowadays. We propose an intelligent recommendation algorithm combining recurrent neural network (RNN) and knowledge graph (KG) and analyze and demonstrate its performance by building models and experiments. The results show that among the five different recommendation models, the intelligent recommendation algorithm model combining RNN and knowledge graph has the highest AUC and ACC values in the Book-Crossing and MovieLens-1M. At the same time, the algorithm’s rating prediction error values are small (less than 2%) in extracting different users’ ratings for different books. In addition, the intelligent recommendation algorithm combining RNN and knowledge graph has the lowest RMSE and MAE values in the comparison of three different recommendation algorithms, indicating that it has better performance and stability, which is important for the improvement of user recommendation effect.
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spelling doaj-art-af9e463fa6944f0f874a9b6ea7463cd22025-08-20T02:23:16ZengWileyJournal of Applied Mathematics1687-00422022-01-01202210.1155/2022/7323560Intelligent Recommendation Algorithm Combining RNN and Knowledge GraphFengsheng Zeng0Qin Wang1Academy of Engineering and TechnologyAcademy of Engineering and TechnologyWith the continuous application and development of big data and algorithm technology, intelligent recommendation algorithms are gradually affecting all aspects of people’s daily life. The impact of smart recommendation algorithm has both advantages and disadvantages; it can facilitate people’s life, but also exists at the same time the invasion of privacy, information cocoon, and other problems. How to optimize intelligent recommendation algorithms to serve the society more safely and efficiently becomes a problem that needs to be solved nowadays. We propose an intelligent recommendation algorithm combining recurrent neural network (RNN) and knowledge graph (KG) and analyze and demonstrate its performance by building models and experiments. The results show that among the five different recommendation models, the intelligent recommendation algorithm model combining RNN and knowledge graph has the highest AUC and ACC values in the Book-Crossing and MovieLens-1M. At the same time, the algorithm’s rating prediction error values are small (less than 2%) in extracting different users’ ratings for different books. In addition, the intelligent recommendation algorithm combining RNN and knowledge graph has the lowest RMSE and MAE values in the comparison of three different recommendation algorithms, indicating that it has better performance and stability, which is important for the improvement of user recommendation effect.http://dx.doi.org/10.1155/2022/7323560
spellingShingle Fengsheng Zeng
Qin Wang
Intelligent Recommendation Algorithm Combining RNN and Knowledge Graph
Journal of Applied Mathematics
title Intelligent Recommendation Algorithm Combining RNN and Knowledge Graph
title_full Intelligent Recommendation Algorithm Combining RNN and Knowledge Graph
title_fullStr Intelligent Recommendation Algorithm Combining RNN and Knowledge Graph
title_full_unstemmed Intelligent Recommendation Algorithm Combining RNN and Knowledge Graph
title_short Intelligent Recommendation Algorithm Combining RNN and Knowledge Graph
title_sort intelligent recommendation algorithm combining rnn and knowledge graph
url http://dx.doi.org/10.1155/2022/7323560
work_keys_str_mv AT fengshengzeng intelligentrecommendationalgorithmcombiningrnnandknowledgegraph
AT qinwang intelligentrecommendationalgorithmcombiningrnnandknowledgegraph