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Improving Explainability of Recommendation System by Multi-sided Tensor Factorization

Authors
Hong, MinsungAkerkar, RajendraJung, Jason J.
Issue Date
Feb-2019
Publisher
TAYLOR & FRANCIS INC
Keywords
Context-based recommendation; explainable recommendation; multi-sided recommendation; tensor factorization
Citation
CYBERNETICS AND SYSTEMS, v.50, no.2, pp 97 - 117
Pages
21
Journal Title
CYBERNETICS AND SYSTEMS
Volume
50
Number
2
Start Page
97
End Page
117
URI
https://scholarworks.bwise.kr/cau/handle/2019.sw.cau/18226
DOI
10.1080/01969722.2019.1565119
ISSN
0196-9722
1087-6553
Abstract
Recently, explainable recommender systems to improve their persuasiveness have attracted attentions. In this regard, some approaches extract information from posts or comments on items and apply them to simple and effective template. These information (e.g., topics and interests), however, are indirectly reflected to the existing recommendation algorithms or models therefore do not directly improve the recommendation accuracy. Moreover, extra resources in deriving information are required. Thereby, we propose a collaborative filtering approach using a tensor which is modeled considering 5Ws aspects and generate explanations by combining factorization results with templates. Quality and explanation of recommendations were evaluated on quantitative/qualitative analyses.
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소프트웨어대학 (소프트웨어학부)
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