Fuzzy-enhanced hybrid recommender system using autoencoder and GRU with fuzzy ACO weighted fusion
- Department of Computer Engineering, Ma.C, Islamic Azad University, Mashhad, Iran.
- Department of Computer Engineering, Ma.C., Islamic Azad University, Mashhad, Iran
- Department of Electrical Engineering, Ma.C, Islamic Azad University, Mashhad, Iran
Received: 2025-08-17
Revised: 2025-12-22
Accepted: 2025-12-28
Published in Issue 2025-12-30
Copyright (c) 2025 Mahshid Salehi, Hassan Shakeri, Seyyed Javad Seyyed Mahdavi Chabok (Author)

This work is licensed under a Creative Commons Attribution 4.0 International License.
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Abstract
Personalization in large-scale systems is made possible by recommender systems. Collaborative filtering is a traditional approach for recommendation, but it struggles to handle inaccuracy, data sparsity, and prediction error. Our study proposes a hybrid recommendation model that integrates timestamps, user characteristics, and item characteristics to enhance prediction evaluation criteria, thereby addressing these limitations. A new user feature was created by fuzzy c-means clustering algorithm. Using three separate learning mechanisms, AutoEncoder (AE) and Singular Value Decomposition (SVD), the method produces initial rating predictions based on the user features and item features, which are combined with user-item ratings. The Gated Recurrent Unit (GRU) model takes a combination of user-item ratings and their timestamps as input to identify temporal patterns in behaviors and make another initial prediction. The independent predictions are combined by an optimization process, which is then followed by a weighted averaging step. The Fuzzy Ant Colony Optimization (Fuzzy ACO) method is utilized at this point to fine-tune the weights to carry out the ultimate prediction. The efficacy of our hybrid model was evaluated on the MovieLens 1M and MovieLens 100K datasets. In terms of RMSE, MAE, precision, and recall, our model surpasses baseline models in evaluation measures.
Keywords
- Keywords Recommender system, Fuzzy c-means, AutoEncoder, Fuzzy ACO, GRU
References
- Z.Chen, W.Gan, J.Wu, K.Hu and H.Lin. Data scarcity in recommendation systems: A survey. ACM Transactions on Recommender Systems, 3(3): 1-31, 2025.
- Z.Wang. Online language education recommendation based on personalized learning and edge computing. Internet Technology Letters, 8(1): e408, 2025.
- P.Devika and A.Milton. Book recommendation using sentiment analysis and ensembling hybrid deep learning models. Knowledge and Information Systems, 67(2): 1131-1168, 2025.
- X.Zhou, L.Nankai, Z.Weixiong, Z.Dong and Y.Aimin. A contrastive news recommendation framework based on curriculum learning. User Modeling and User-Adapted Interaction, 35(1): 2, 2025.
- L.Möller and S.Pado. Explaining neural news recommendation with attributions onto reading histories. ACM Transactions on Intelligent Systems and Technology, 16(1): 1-25, 2025.
- E.S.P.Krishna, T.B.Ramu, R.K.Chaitanya, M.S.Ram, N.Balayesu, H.P.Gandikota and B.N.Jagadesh. Enhancing E-commerce recommendations with sentiment analysis using MLA-EDTCNet and collaborative filtering. Scientific Reports, 15(1): 6739, 2025.
- J.Yin, X.Qiu and Y.Wang. The Impact of AI-Personalized Recommendations on Clicking Intentions: Evidence from Chinese E-Commerce. Journal of Theoretical and Applied Electronic Commerce Research, 20(1): 21, 2025.
- A.Shankar, P.Perumal, M.Subramanian, N.Ramu, D.Natesan, V.R.Kulkarni and T.Stephan. An intelligent recommendation system in e-commerce using ensemble learning. Multimedia Tools and Applications, 83(16): 48521-48537, 2024.
- F.Li. When and why personalized tourism recommendations reduce purchase intention? Information Technology & Tourism, 27(1): 285-305, 2025.
- L.W.Dietz, P.Sánchez and A.Bellogín. Understanding the influence of data characteristics on the performance of point-of-interest recommendation algorithms. Information Technology & Tourism, 27(1): 75-124, 2025.
- A.K.M.B.Haque, N.Islam and P.Mikalef. To Explain or Not To Explain: An Empirical Investigation of AI-based Recommendations on Social Media Platforms. Electronic Markets, 35(1): 2, 2024.
- D.Yu, X.Zhou, A.Noorian and M.Hazratifard. An AI-driven social media recommender system leveraging smartphone and IoT data. The Journal of Supercomputing, 81(1): 272, 2024.
- A.Akhadam, O.Kbibchi L.Mekouar and Y.Iraqi. A Comparative Evaluation of Recommender Systems Tools. IEEE Access, 13(1): 29493-29522, 2025.
- J.N.Bondevik, K.E.Bennin, Ö.Babur and C.Ersch. A systematic review on food recommender systems. Expert Systems with Applications, 238(E): 122166, 2024.
- Z.Shokrzadeh, M.R.Feiziderakhshi, M.A.Balafar and J.B.Mohasefi. Knowledge graph-based recommendation system enhanced by neural collaborative filtering and knowledge graph embedding. Ain Shams Engineering Journal, 15(1): 102263, 2024.
- R.Widayanti, M.H.R.Chakim, C.Lukita, U.Rahardja and N.Lutfiani. Improving recommender systems using hybrid techniques of collaborative filtering and content-based filtering. Journal of Applied Data Sciences, 4(3): 289-302, 2023.
- Y.Deldjoo, M.Schedl and P.Knees. Content-driven music recommendation: Evolution, state of the art, and challenges. Computer Science Review, 51(1): 100618, 2024.
- H.A.Basha, S.K.B.Sangeetha, S.Sasikumar, J.Arunnehru and M.Subramaniam. A proficient video recommendation framework using hybrid fuzzy C means clustering and Kullback-Leibler divergence algorithms. Multimedia Tools and Applications, 82(14): 20989-21004, 2023.
- S.Siet, S.Peng, S.Ilkhomjon, M.Kang and D.S.Park. Enhancing sequence movie recommendation system using deep learning and kmeans. Applied sciences, 14(6): 2505, 2024.
- I.Saifudin, T.Widiyaningtyas, I.A.E.Zaeni and A.Aminuddin. SVD-GoRank: Recommender system algorithm using SVD and Gower’s ranking. IEEE Access, 13(1): 19796, 2025.
- M.S.Khan, Z.Hussain, M.I.Amaad, M.Z.Hasan, A.Khalid, S.H.Chuhan, R.Awan and M.A.Yaqub. Movie Recommendation System Using Euclidean Distance. OPJU International Technology Conference (OTCON) on Smart Computing for Innovation and Advancement in Industry 4.0, 2024: 1-7, 2024.
- Y.Kanzawa and T.Kondo. Collaborative filtering with q-divergence-based fuzzy clustering for spherical data. Journal of Ambient Intelligence and Humanized Computing, 14(12): 15875-15883, 2023.
- W.Wang, W.Ma and K.Yan. FSPPCFs: a privacy-preserving collaborative filtering recommendation scheme based on fuzzy C-means and Shapley value. Complex & Intelligent Systems, 11(1): 107, 2024.
- J.Hu, T.An, Z.Yu, J.Du and Y.Luo. Contrastive Learning for Cold Start Recommendation with Adaptive Feature Fusion. , 2019. 5th International Conference on Consumer Electronics and Computer Engineering (ICCECE), 2025: 520-524, 2019.
- M.Ayub, M.A.Ghazanfar, Z.Mehmood, T.Saba, R.Alharbey, A.M.Munshi and M.A.Alrige. Modeling user rating preference behavior to improve the performance of the collaborative filtering based recommender systems. PloS one, 14(8): e0220129, , 2019.
- Y.Li, Y.Shan, Y.Liu, H.Wang, W.Wang, Y.Wang and R.Li. Personalized Federated Recommendation for Cold-Start Users via Adaptive Knowledge Fusion. Proceedings of the ACM on Web Conference, 2025: 2700-2709, 2025.
- D.M.Alsekait, A.Y.Shdefat, N.Mostafa, A.M.M.Hamdy, H.Fathi and D.S.Abdelminaam. Next-generation movie recommenders: leveraging hybrid deep learning for enhanced personalization. Applied Mathematics, 18(5): 957-981, 2024.
- S.Lee, J.Ahn, and N.Kim. Embedding Enhancement Method for LightGCN in Recommendation Information Systems. Electronics, 13(12): 2282, 2024.
- M.S.Reddy, H.Karnati and L.M.Sundari. Transformer-Based Federated Learning Models for Recommendation Systems. IEEE Access, 12(3): 109596-109607, 2024.
- Y.Mu and Y.Wu. Multimodal movie recommendation system using deep learning. Mathematics, 11(4): 895, 2023.
- F.M.Harper and J.A.Konstan. The movielens datasets: History and context. Acm Transactions on Interactive Intelligent Systems, 5(4): 1-19, 2015.
- J.Zhang, Y.Wang, Z.Yuan and Q.Jin. Personalized real-time movie recommendation system: Practical prototype and evaluation. Tsinghua Science and Technology, 25(2): 180-191, 2020.
10.57647/j.fomj.2025.0604.22
