基于改进的协同过滤的电子商务网站推荐系统
Recommendation System for E-Commerce Websites Based on Improved Collaborative Filtering
摘要: 随着互联网的发展以及普及,电子商务网站的访问量与数量庞大,但是发现电子商务网站对用户检索意愿的考虑较少。针对此问题,本文使用一种基于增量改进的协同过滤(CF)的推荐算法(ICFR),首先,通过CF算法来获取用户偏好与所推荐商品和电子商务网站之间的关系;其次,通过分析网络日志来获取用户的浏览信息,并将其归一化作为评分值;最后,通过所设计的增量算法完成历史用户偏好数据信息的更新。我们通过一些基于ICFR模型案例说明ICFR模型适用于电子商务网站的推荐。
Abstract: With the development and popularization of the Internet, the number of visits to personalized e-commerce website is huge. However, it was found that e-commerce websites gave less consideration to users’ search intentions. To solve this problem, this paper uses an incremental Improved Collaborative Filtering (CF) Recommendation Algorithm (ICFR), firstly, the CF algorithm is used to obtain the relationship between user preferences and recommended products and e-commerce websites. Secondly, the user’s browsing information was obtained by analyzing the network logs, and it was normalized as the scoring value. Finally, the designed incremental algorithm is used to update the historical user preference data information. We illustrate the application of the ICFR model to personalized e-commerce website recommendations through some examples based on the ICFR model.
文章引用:王豪, 谢本亮. 基于改进的协同过滤的电子商务网站推荐系统[J]. 电子商务评论, 2024, 13(2): 3933-3944. https://doi.org/10.12677/ecl.2024.132479

参考文献

[1] 黄玲, 黄镇伟, 黄梓源, 等. 图卷积宽度跨域推荐系统[J]. 计算机研究与发展, 2024, 61: 1-17.
[2] Meehan, K., et al. (2013) Context-Aware Intelligent Recommendation System for Tourism. 2013 IEEE International Conference on Pervasive Computing and Communications Workshops (PERCOM Workshops), San Diego, 18-22 March 2013, 328-331. [Google Scholar] [CrossRef
[3] Wang, Y.Z., et al. (2016) A Mobile Recommendation System Based on Logistic Regression and Gradient Boosting Decision Trees. 2016 International Joint Conference on Neural Networks (IJCNN), Vancouver, 24-29 July 2016, 1896-1902. [Google Scholar] [CrossRef
[4] 赵付春, 邓少军. 社交媒体对科技创新网络的影响[J]. 中国科技论坛, 2015(2): 32-36.
[5] Guo, K., et al. (2017) SOR: An Optimized Semantic Ontology Retrieval Algorithm for Heterogeneous Multimedia Big Data. Journal of Computational Science, 28, 455-465. [Google Scholar] [CrossRef
[6] Zhu, Y. (2023) Personalized Recommendation of Educational Resource Information Based on Adaptive Genetic Algorithm. International Journal of Reliability, Quality and Safety Engineering, 30, Article ID: 2250014. [Google Scholar] [CrossRef
[7] Ziogas, I., Streviniotis, E., Papadakis, H., et al. (2022) Content-Based Recommendations Using Similarity Distance Measures with Application in the Tourism Domain. Proceedings of the 12th Hellenic Conference on Artificial Intelligence, Corfu, 7-9 September 2022, Article No. 31. [Google Scholar] [CrossRef
[8] Alghamdi, S., Sheta, O. and Adrees, M.S. (2022) A Framework of Prompting Intelligent System for Academic Advising Using Recommendation System Based on Association Rules. 2022 9th International Conference on Electrical and Electronics Engineering (ICEEE), Alanya, 29-31 March 2022, 392-398. [Google Scholar] [CrossRef
[9] Mohammed, A.A. and Hamad, M.M. (2023) Recommender Systems and Machine Learning Techniques for Large Educational Data: A Survey. 2023 16th International Conference on Developments in eSystems Engineering (DeSE), Istanbul, 18-20 December 2023, 782-787. [Google Scholar] [CrossRef
[10] Zhao, D., Xiu, J., Bai, Y., et al. (2016) An Improved Item-Based Movie Recommendation Algorithm. 2016 4th International Conference on Cloud Computing and Intelligence Systems (CCIS), Beijing, 17-19 August 2016, 278-281. [Google Scholar] [CrossRef
[11] Wu, D., Xiao, E., Zhu, Y., et al. (2023) Efficient Retrieval of the Top-k Most Relevant Event-Partner Pairs. IEEE Transactions on Knowledge and Data Engineering, 35, 2529-2543. [Google Scholar] [CrossRef
[12] Yang, W.K., Wang, Z.Y. and Sun, C.Y. (2015) A Collaborative Representation Based Projections Method for Feature Extraction. Pattern Recognition, 48, 20-27. [Google Scholar] [CrossRef
[13] Pu, X. and Zhang, B. (2020) Clustering Collaborative Filtering Recommendation Algorithm of Users Based on Time Factor. 2020 Chinese Control and Decision Conference (CCDC), Hefei, 22-24 August 2020, 364-368. [Google Scholar] [CrossRef
[14] (2019) Collaborative Filtering for Predicting and Tracking Performance of Measurement Apparatus on Different Applications. Research Disclosure.
https://xueshu.baidu.com/usercenter/paper/show?paperid=13250mb0726k00t08g070mv0um256815&site=xueshu_se
[15] Jia, Z.Y., et al. (2015) User-Based Collaborative Filtering for Tourist Attraction Recommendations. IEEE International Conference on Computational Intelligence & Communication Technology, Ghaziabad, 13-14 February 2015, 22-25. [Google Scholar] [CrossRef
[16] Liu, J., Li, D., Gu, H., et al. (2023) Personalized Graph Signal Processing for Collaborative Filtering. Proceedings of the ACM Web Conference, Austin, 30 April-4 May 2023, 1264-1272. [Google Scholar] [CrossRef
[17] Huang, H.C., Zheng, S. and Zhao, Z. (2010) Application of Pearson Correlation Coefficient (PCC) and Kolmogorov-Smirnov Distance (KSD) Metrics to Identify Disease-Specific Biomarker Genes. BMC Bioinformatics, 11, P23. [Google Scholar] [CrossRef
[18] Zarei, M.R., Moosavi, M.R. and Elahi, M. (2022) Adaptive Trust-Aware Collaborative Filtering for Cold Start Recommendation. Behaviormetrika, 50, 541-562. [Google Scholar] [CrossRef
[19] Anelli, V.W., Bellogín, A., Di Noia, T., et al. (2022) Top-N Recommendation Algorithms: A Quest for the State-of-the-Art. UMAP ‘22: Proceedings of the 30th ACM Conference on User Modeling, Adaptation and Personalization, Barcelona, 4-7 July 2022, 121-131. [Google Scholar] [CrossRef
[20] George, T. and Merugu, S. (2005) A Scalable Collaborative Filtering Framework Based on Co-Clustering. IEEE International Conference on Data Mining, Houston, 27-30 November 2005, 4 p.
[21] Guo, K., et al. (2018) Transparent Learning: An Incremental Machine Learning Framework Based on Transparent Computing. IEEE Network, 32, 146-151. [Google Scholar] [CrossRef