Identyfikatory
Warianty tytułu
Języki publikacji
Abstrakty
In enterprise environments, the products may come from a variety of categories or do-mains. Users may engage with entities in one domain, but not in the others when theyare presented with multiple domains. Such users are referred to as “cold-starters” in otherdomains. The primary difficulty in cross-domain recommendation systems is to efficientlytransfer user’s latent information based on their engagements in one domain into theother domains. The advancements in recommendation systems have inspired us to de-velop review-driven recommendation models that utilize cross-domain knowledge transferand deep learning models. This work proposes a sentiment transfer network specificallydesigned for providing recommendation in cross-domain (STN-CDRS). The novelty of thework lies in the user rating enrichment mechanism, which is done by extracting latentinformation from user review data to fill sparse rating matrix. This enrichment uses pre-viously developed RNN-Core method for efficiently learning user reviews. The reviewsprovided by the users are used to enrich sparse data across domains. This enrichmentallows two things: alleviates the cold start problem and allows more intersecting usersacross domains to bridge the gap while learning. This work empirically demonstrates itsefficiency by iteratively updating over the baseline recommendation models in terms ofMAE (mean absolute error), RMSD (root mean squared deviation), precision and recallmeasures with other state-of-the-art-review-aided cross-domain recommendation systems.
Rocznik
Tom
Strony
389--415
Opis fizyczny
Bibliogr. 46 poz., rys., tab., wykr.
Twórcy
autor
- Computer Science and Technology, Manav Rachna University, Faridabad, India
autor
- School of Computer Science Engineering and Technology, Bennett University, GreaterNoida, India
Bibliografia
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- 21. S.T. Zhong, L. Huang, C.D. Wang, J.H. Lai, P.S. Yu, An autoencoder framework with attention mechanism for cross-domain recommendation, IEEE Transactions on Cybernetics, 52(6): 5229–5241, 2022, doi: 10.1109/TCYB.2020.3029002.
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- 23. F. Zhu, Y. Wang, C. Chen, G. Liu, M. Orgun, J. Wu, A deep framework for cross-domain and cross-system recommendations, arXiv, 2020, arXiv: 2009.06215.
- 24. F. Yuan, L. Yao, B. Benatallah, DARec: Deep domain adaptation for cross-domain recommendation via transferring rating pattern, arXiv, 2019, arXiv: 1905.10760.
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- 30. Y. Wang, H. Yu, G. Wang, Y. Xie, Cross-domain recommendation based on sentiment analysis and latent feature mapping, Entropy, 22(4): 473, 2020, doi: 10.3390/e22040473.
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Typ dokumentu
Bibliografia
Identyfikator YADDA
bwmeta1.element.baztech-87a10eb5-7bb2-4041-a23c-8e8d6fd3d372