A NOVEL PRODUCT RECOMMENDER SYSTEMBASED ON TREND AND PRODUCTAVAILABILITY USING HR-FR AND 3SDL-GRU

Authors

  • Srinivas Kolluri Quantum Integrators Group LLC, USA. Author

Keywords:

Product Recommender System, Artificial Intelligence, Product Review, Gated Recurrent Unit (GRU), Customer Shopping Trend, Principal Component Analysis (PCA),, Adaptive Filtering Technique

Abstract

Artificial Intelligence (AI) is utilized by the Product Recommender System (PRS) to learn the heterogeneous data for proper recommendation. None of the prevailing works focused on PRS centered on User Preference Data (UPD) and trends. Hence, a Swish Scaled Stochastic Depth Lasso-based Gated Recurrent Unit (3SDL-GRU)-based PRS is proposed in this paper using UPD, browser history, and trend. Primarily, the UPD is gathered and pre-processed. After that, the dimensionality reduction is carried out utilizing Principal PolySem-kernel Component Analysis (P2SCA). Next, by employing the K-Means Clustering (KMC), the data grouping is performed. Afterward, the Afinn sentiment analysis is carried out; in addition, the features are extracted from the user’s browsing history. Then, by utilizing the Harmonic Ramp-Fuzzy Rule (HR-FR), adaptive filtering is performed. In the meantime, the keywords are extracted. Then, by utilizing the Bidirectional Suffix Array-based Encoder Representation form Transformers (BSAERT), the word is embedded. Moreover, the features are extracted from the grouped data. Lastly, for product recommendation, the extracted features and the output from word embedding, sentiment score, and the adaptive filter are given to the 3SDL-GRU. Therefore, the products are effectively recommended with a 0.438 Mean Squared Error (MSE), which outperforms prevailing methodologies.

References

Bellini, P., Palesi, L. A. I., Nesi, P., & Pantaleo, G. (2023). Multi Clustering Recommendation System for Fashion Retail. Multimedia Tools and Applications, 82(7), 9989–10016. https://doi.org/10.1007/s11042-021-11837-5

Cach N. Dang, M. N. M.-G. and F. D. la P. (2021). An Approach to Integrating Sentiment Analysis into. Sensors (Switzerland), 21, 1–17.

Dadoun, A., Defoin-Platel, M., Fiig, T., Landra, C., & Troncy, R. (2021). How recommender systems can transform airline offer construction and retailing. Journal of Revenue and Pricing Management, 20(3), 301–315. https://doi.org/10.1057/s41272-021-00313-2

Deldjoo, Y., Jannach, D., Bellogin, A., Difonzo, A., & Zanzonelli, D. (2024). Fairness in recommender systems: research landscape and future directions. User Modeling and User-Adapted Interaction, 34(1), 59–108. https://doi.org/10.1007/s11257-023-09364-z

Elahi, M., Khosh Kholgh, D., Kiarostami, M. S., Oussalah, M., & Saghari, S. (2023). Hybrid recommendation by incorporating the sentiment of product reviews. Information Sciences, 625, 738–756. https://doi.org/10.1016/j.ins.2023.01.051

Forouzandeh, S., Berahmand, K., Sheikhpour, R., & Li, Y. (2023). A new method for recommendation based on embedding spectral clustering in heterogeneous networks (RESCHet). Expert Systems with Applications, 231, 1–12. https://doi.org/10.1016/j.eswa.2023.120699

Gheewala, S., Xu, S., Yeom, S., & Maqsood, S. (2024). Exploiting deep transformer models in textual review based recommender systems. Expert Systems with Applications, 235, 1–21. https://doi.org/10.1016/j.eswa.2023.121120

Han, D., Kim, D., Han, K., & Yi, M. Y. (2024). Keyword-enhanced recommender system based on inductive graph matrix completion. Engineering Applications of Artificial Intelligence, 128, 1–15. https://doi.org/10.1016/j.engappai.2023.107499

Hou, Y., Zhang, J., Lin, Z., Lu, H., Xie, R., McAuley, J., & Zhao, W. X. (2024). Large Language Models are Zero-Shot Rankers for Recommender Systems. Lecture Notes in Computer Science (Including Subseries Lecture Notes in Artificial Intelligence and Lecture Notes in Bioinformatics), 364–381. https://doi.org/10.1007/978-3-031-56060-6_24

Iftikhar, A., Ghazanfar, M. A., Ayub, M., Ali Alahmari, S., Qazi, N., & Wall, J. (2024). A reinforcement learning recommender system using bi-clustering and Markov Decision Process. Expert Systems with Applications, 237, 1–18. https://doi.org/10.1016/j.eswa.2023.121541

Jin, D., Wang, L., Zhang, H., Zheng, Y., Ding, W., Xia, F., & Pan, S. (2023). A survey on fairness-aware recommender systems. Information Fusion, 100, 1–22. https://doi.org/10.1016/j.inffus.2023.101906

Kannout, E., Grzegorowski, M., Grodzki, M., & Nguyen, H. S. (2024). Clustering-Based Frequent Pattern Mining Framework for Solving Cold-Start Problem in Recommender Systems. IEEE Access, 12, 13678–13698. https://doi.org/10.1109/ACCESS.2024.3355057

Karthik, R. V., & Ganapathy, S. (2021). A fuzzy recommendation system for predicting the customers interests using sentiment analysis and ontology in e-commerce. Applied Soft Computing, 108, 1–18. https://doi.org/10.1016/j.asoc.2021.107396

Khan, Z., Hussain, M. I., Iltaf, N., Kim, J., & Jeon, M. (2021). Contextual recommender system for E-commerce applications. Applied Soft Computing, 109, 1–14. https://doi.org/10.1016/j.asoc.2021.107552

Khelloufi, A., Ning, H., Naouri, A., Sada, A. Ben, Qammar, A., Khalil, A., Mao, L., & Dhelim, S. (2024). A Multimodal Latent-Features-Based Service Recommendation System for the Social Internet of Things. IEEE Transactions on Computational Social Systems, 1–16. https://doi.org/10.1109/TCSS.2024.3360518

Lakshmi, T. J., & Bhavani, S. D. (2023). Link prediction approach to recommender systems. Computing, 1–23. https://doi.org/10.1007/s00607-023-01227-0

Liu, N., & Zhao, J. (2023). Recommendation System Based on Deep Sentiment Analysis and Matrix Factorization. IEEE Access, 11, 16994–17001. https://doi.org/10.1109/ACCESS.2023.3246060

Low, M. P., Cham, T. H., Chang, Y. S., & Lim, X. J. (2023). Advancing on weighted PLS-SEM in examining the trust-based recommendation system in pioneering product promotion effectiveness. Quality and Quantity, 57, 607–636. https://doi.org/10.1007/s11135-021-01147-1

Papadakis, H., Papagrigoriou, A., Panagiotakis, C., Kosmas, E., & Fragopoulou, P. (2022). Collaborative filtering recommender systems taxonomy. Knowledge and Information Systems, 64(1), 35–74. https://doi.org/10.1007/s10115-021-01628-7

Suresh, A., & Carmel Mary Belinda, M. J. (2022). Online product recommendation system using gated recurrent unit with Broyden Fletcher Goldfarb Shanno algorithm. Evolutionary Intelligence, 15(3), 1861–1874. https://doi.org/10.1007/s12065-021-00594-x

Published

2025-01-10

How to Cite

Srinivas Kolluri. (2025). A NOVEL PRODUCT RECOMMENDER SYSTEMBASED ON TREND AND PRODUCTAVAILABILITY USING HR-FR AND 3SDL-GRU. INTERNATIONAL JOURNAL OF ADVANCED RESEARCH IN ENGINEERING AND TECHNOLOGY (IJARET), 16(01), 37-51. https://lib-index.com/index.php/IJARET/article/view/1625