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DaGzang: a synthetic data generator for cross-domain recommendation servicesopen access

Authors
Nguyen, Luong VuongVo, Nam D.Jung, Jason J.
Issue Date
May-2023
Publisher
PeerJ Inc.
Keywords
Data generation; Evaluation; Recommendation system
Citation
PeerJ Computer Science, v.9
Journal Title
PeerJ Computer Science
Volume
9
URI
https://scholarworks.bwise.kr/cau/handle/2019.sw.cau/67209
DOI
10.7717/peerj-cs.1360
ISSN
2376-5992
2376-5992
Abstract
Research on cross-domain recommendation systems (CDRS) has shown efficiency by leveraging the overlapping associations between domains in order to generate more encompassing user models and better recommendations. Nonetheless, if there is no dataset belonging to a specific domain, it is a challenge to generate recommendations in CDRS. In addition, finding these overlapping associations in the real world is generally tricky, and it makes its application to actual services hard. Considering these issues, this study aims to present a synthetic data generation platform (called DaGzang) for cross-domain recommendation systems. The DaGzang platform works according to the complete loop, and it consists of the following three steps: (i) detecting the overlap association (data distribution pattern) between the real-world datasets, (ii) generating synthetic datasets based on these overlap associations, and (iii) evaluating the quality of the generated synthetic datasets. The real-world datasets in our experiments were collected from Amazon's e-commercial website. To validate the usefulness of the synthetic datasets generated from DaGzang, we embed these datasets into our cross-domain recommender system, called DakGalBi. We then evaluate the recommendations generated from DakGalBi with collaborative filtering (CF) algorithms, user-based CF, and item-based CF. Mean absolute error (MAE) and root mean square error (RMSE) metrics are measured to evaluate the performance of collaborative filtering (CF) CDRS. In particular, the highest performance of the three recommendation methods is user-based CF when using 10 synthetic datasets generated from DaGzang (0.437 at MAE and 0.465 at RMSE) © Copyright 2023 Nguyen et al
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소프트웨어대학 (소프트웨어학부)
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