Abstract:
Using tags and other forms of textual information, online retailers can create their product listings, descriptions, and categories. E-commerce information services, such...Show MoreMetadata
Abstract:
Using tags and other forms of textual information, online retailers can create their product listings, descriptions, and categories. E-commerce information services, such as search and product recommendation, depend significantly on textual features to assist buyers in finding the items they want. This research focuses on “tags,” which often use textual descriptions of items. We assume that merchants are not always the “best” suppliers of item tag information, either because they are ill-equipped to do so (since they have not been “trained”) or because they are purposefully attempting to rig the system by using misleading or erroneous tags to sell their commodities (tag spam). To address these concerns, we may use automated tag recommendation techniques to enhance the precision with which we suggest tags for every specific product. We proposed EPR-ML for E-commerce product recommendation using NLP and ML algorithms. This research employed a product sentiment dataset normalized using NLP; the best features were selected using Logistic regression (LR). The classification was performed using various machine learning algorithms, including Linear support vector machine (L- SVM) and Gaussian nave Bayes (GNB), to determine which model is most accurate at predicting the number of days it will take a video to trend from the time it was uploaded and the number of days it will trend on the trending list. Using LSVM, the research achieved a maximum accuracy of 96%.
Date of Conference: 14-16 December 2022
Date Added to IEEE Xplore: 22 March 2023
ISBN Information:
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1.
A. Biswas, K. S. Vineeth, A. Jain and Mohana, "Development of product recommendation engine by collaborative filtering and association rule mining using machine learning algorithms", 2020 Fourth International Conference on Inventive Systems and Control (ICISC), 2020.
2.
A. Karthikeyan, K. Somasundaram, M. Mahendran and S. Yogadinesh, "Bridging social media to E-Commerce: Using collaborative filtering product recommendation", 2017 IEEE International Conference on Power Control Signals and Instrumentation Engineering (ICPCSI), 2017.
3.
A. Marwade, N. Kumar, S. Mundada and J. Aghav, "Augmenting e-commerce product recommendations by analyzing customer personality", 2017 9th International Conference on Computational Intelligence and Communication Networks (CICN), 2017.
4.
G. Khanvilkar and D. Vora, "Smart recommendation system based on product reviews using random forest", 2019 International Conference on Nascent Technologies in Engineering (ICNTE), 2019.
5.
H. Khatter, S. Arif, U. Singh, S. Mathur and S. Jain, "Product recommendation system for E-commerce using collaborative filtering and textual clustering", 2021 Third International Conference on Inventive Research in Computing Applications (ICIRCA), 2021.
6.
J. Li and L. Zhou, "Research on recommendation system of agricultural products E-commerce platform based on Hadoop", 2018 IEEE 9th International Conference on Software Engineering and Service Science (ICSESS), 2018.
7.
J. Xia, "E-commerce product recommendation method based on collaborative filtering technology", 2016 International Conference on Smart Grid and Electrical Automation (ICSGEA), 2016.
8.
M. Tahir, R. N. Enam and S. M. Nabeel Mustafa, "E-commerce platform based on Machine Learning Recommendation System", 2021 6th International Multi-Topic ICT Conference (IMTIC), 2021.
9.
M. Y. Imam, Z.-U.-A. Usmani, A. Khan and O. Usmani, "A product recommendation system for e-shopping", 2021 IEEE Latin American Conference on Computational Intelligence (LA-CCI), 2021.
10.
S. Jain and P. Hegade, "E-commerce product recommendation based on product specification and similarity", 2021 International Conference on Innovation and Intelligence for Informatics Computing and Technologies (3ICT), 2021.
11.
S.-S. Weng and M.-J. Liu, "Personalized product recommendation in e-commerce", IEEE International Conference on eTechnology e-Commerce and e-Service 2004. EEE ’04. 2004, 2004.
12.
T. Badriyah, E. T. Wijayanto, I. Syarif and P. Kristalina, "A hybrid recommendation system for E-commerce based on product description and user profile", 2017 Seventh International Conference on Innovative Computing Technology (INTECH), 2017.
13.
T. Chen, Y. Liang, T. Huang, J. Huang and C. Liu, "Agricultural product recommendation model and E-commerce system based on CFR algorithm", 2022 IEEE 2nd International Conference on Electronic Technology Communication and Information (ICETCI), 2022.
14.
U. Attokurov, O. Kaya and M. S. Sezgin, "Product recommendation based on embeddings: People who viewed this product also viewed these products", 2022 IEEE International Conference on Big Data and Smart Computing (BigComp), 2022.
15.
Z. Fan, D. Chang and J. Cui, "Algorithm in E-commerce Recommendation", 2018 5th International Conference on Industrial Economics System and Industrial Security Engineering (IEIS), 2018.
16.
J. Singh, A. Mittal, R. Mittal, K. Singh and V. Malik, "December). i-Fence: A Spatio-Temporal Context-Aware Geofencing Framework for Triggering Impulse Decisions", International Conference on Big Data Analytics, pp. 63-80, 2020.
17.
R. Mittal, V. Malik, J. Singh, V. Singh and A. Mittal, "Web usage mining—process tools and practices", Lecture Notes in Electrical Engineering, pp. 449-457, 2022.
18.
S. Shamas, S. N. Panda and I. Sharma, "Review on lung nodule segmentation-based lung cancer classification using machine learning approaches", Artificial Intelligence on Medical Data, pp. 277-286, 2023.
19.
S. Goel, K. Guleria and S. N. Panda, "Machine Learning Techniques for Precision Agriculture Using Wireless Sensor Networks", ECS Transactions, vol. 107, no. 1, 2022.