Intelligent Recommendation Algorithm Combining RNN and Knowledge Graph

Fengsheng Zeng, Qin Wang
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Abstract

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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结合RNN和知识图的智能推荐算法
随着大数据和算法技术的不断应用和发展,智能推荐算法正逐渐影响着人们日常生活的方方面面。智能推荐算法的影响既有优点也有缺点;它可以方便人们的生活,但同时也存在侵犯隐私、信息茧化等问题。如何优化智能推荐算法,使其更安全、更高效地服务于社会,成为当前需要解决的问题。提出了一种结合递归神经网络(RNN)和知识图(KG)的智能推荐算法,并通过建立模型和实验对其性能进行了分析和论证。结果表明,在5种不同的推荐模型中,结合RNN和知识图的智能推荐算法模型在Book-Crossing和MovieLens-1M中的AUC和ACC值最高。同时,在提取不同用户对不同图书的评分时,算法的评分预测误差值很小(小于2%)。此外,结合RNN和知识图的智能推荐算法在三种不同推荐算法的比较中RMSE和MAE值最低,表明其具有更好的性能和稳定性,这对提高用户推荐效果具有重要意义。
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