Diversification-oriented accuracy prediction in recommender systems

被引:0
作者
Valarmathi P. [1 ]
Dhanalakshmi R. [2 ]
Rajagopalan N. [1 ,3 ]
Sinha B.B. [4 ]
机构
[1] National Institute of Technology Puducherry, Karaikal, Puducherry
[2] Department of CSE, Indian Institute of Information Technology Tiruchirappalli, Tiruchirappalli
[3] Department of CSE, National Institute of Technology Puducherry, Karaikal, Puducherry
[4] Indian Institute of Information Technology Dharwad, Karnataka
关键词
coverage; diversification; e-commerce; GBA; graph-based algorithm; MovieLens; significant nearest neighbour; SNN;
D O I
10.1504/IJISE.2022.123583
中图分类号
学科分类号
摘要
Tremendous amount of data generated by e-commerce users on items (e.g., purchase or rating history), sets some key challenges for the online knowledge discovery scheme. Recommendation systems are an important element of the digital marketplace such as e-stores and service providers that use the generated information to discover preferred products of the consumers. Developing an effective recommender system that produces diverse suggestions without compromising the precision of the customised list is challenging for online systems. This paper aims at diversifying recommendation by integrating graph-based algorithm supported with significant nearest neighbour strategy for enhancing recommendation precision. The experimental efficacy on the 100K dataset of MovieLens shows that the proposed hybrid model has a strong coverage and superior efficiency in product recommendations. © 2022 Inderscience Enterprises Ltd.
引用
收藏
页码:206 / 220
页数:14
相关论文
共 50 条
[41]   A Comparative Study of Shilling Attack Detectors for Recommender Systems [J].
Wang, Youquan ;
Zhang, Lu ;
Tao, Haicheng ;
Wu, Zhiang ;
Cao, Jie .
2015 12TH INTERNATIONAL CONFERENCE ON SERVICE SYSTEMS AND SERVICE MANAGEMENT (ICSSSM), 2015,
[42]   Introducing specialization in e-commerce recommender systems [J].
Palopoli, Luigi ;
Rosaci, Domenico ;
Sarne, Giuseppe M. L. .
CONCURRENT ENGINEERING-RESEARCH AND APPLICATIONS, 2013, 21 (03) :187-196
[43]   A Survey of Explainable E-Commerce Recommender Systems [J].
Gao, Huaqi ;
Zhou, Shunke .
2022 IEEE/WIC/ACM INTERNATIONAL JOINT CONFERENCE ON WEB INTELLIGENCE AND INTELLIGENT AGENT TECHNOLOGY, WI-IAT, 2022, :723-730
[44]   A Logistic Factorization Model for Recommender Systems With Multinomial Responses [J].
Wang, Yu ;
Bi, Xuan ;
Qu, Annie .
JOURNAL OF COMPUTATIONAL AND GRAPHICAL STATISTICS, 2020, 29 (02) :396-404
[45]   When do Recommender Systems Work the Best? The Moderating Effects of Product Attributes and Consumer Reviews on Recommender Performance [J].
Lee, Dokyun ;
Hosanagar, Kartik .
PROCEEDINGS OF THE 25TH INTERNATIONAL CONFERENCE ON WORLD WIDE WEB (WWW'16), 2016, :85-97
[46]   Exploiting recommendation confidence in decision-aware recommender systems [J].
Mesas, Rus M. ;
Bellogin, Alejandro .
JOURNAL OF INTELLIGENT INFORMATION SYSTEMS, 2020, 54 (01) :45-78
[47]   The Effect of Personalization Techniques in Users' Perceptions of Conversational Recommender Systems [J].
Laban, Guy ;
Araujo, Theo .
PROCEEDINGS OF THE 20TH ACM INTERNATIONAL CONFERENCE ON INTELLIGENT VIRTUAL AGENTS (ACM IVA 2020), 2020,
[48]   Third Workshop on Recommender Systems in Fashion-fashionXrecsys2021 [J].
Jaradat, Shatha ;
Dokoohaki, Nima ;
Pampin, Humberto Jesus Corona ;
Shirvany, Reza .
15TH ACM CONFERENCE ON RECOMMENDER SYSTEMS (RECSYS 2021), 2021, :810-812
[49]   Distributional learning in multi-objective optimization of recommender systems [J].
Candelieri A. ;
Ponti A. ;
Giordani I. ;
Bosio A. ;
Archetti F. .
Journal of Ambient Intelligence and Humanized Computing, 2023, 14 (08) :10849-10865
[50]   Online grocery shopping recommender systems: Common approaches and practices [J].
Jansen, Laura Z. H. ;
Bennin, Kwabena E. ;
van Kleef, Ellen ;
Van Loo, Ellen J. .
COMPUTERS IN HUMAN BEHAVIOR, 2024, 159