A Tripartite-Graph Based Recommendation Framework for Price-Comparison Services
Computer Science and Information Systems, Tome 16 (2019) no. 2.

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The recommender systems help users who are going through numerous items (e.g., movies or music) presented in online shops by capturing each user’s preferences on items and suggesting a set of personalized items that s/he is likely to prefer [8]. They have been extensively studied in the academic society and widely utilized in many online shops [33]. However, to the best of our knowledge, recommending items to users in price-comparison services has not been studied extensively yet, which could attract a great deal of attention from shoppers these days due to its capability to save users’ time who want to purchase items with the lowest price [31]. In this paper, we examine why existing recommendation methods cannot be directly applied to price-comparison services, and propose three recommendation strategies that are tailored to price-comparison services: (1) using click-log data to identify users’ preferences, (2) grouping similar items together as a user’s area of interest, and (3) exploiting the category hierarchy and keyword information of items. We implement these strategies into a unified recommendation framework based on a tripartite graph. Through our extensive experiments using real-world data obtained from Naver shopping, one of the largest price-comparison services in Korea, the proposed framework improved recommendation accuracy up to 87% in terms of precision and 129% in terms of recall, compared to the most competitive baseline.
Keywords: recommendation systems, price-comparison services, random walk with restart
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     author = {Sang-Chul Lee and Sang-Wook Kim and Sunju Park and Sunju Park 2 , and Dong-Kyu Chae 1},
     title = {A {Tripartite-Graph} {Based} {Recommendation} {Framework} for {Price-Comparison} {Services}},
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Sang-Chul Lee; Sang-Wook Kim; Sunju Park; Sunju Park 2 , and Dong-Kyu Chae 1. A Tripartite-Graph Based Recommendation Framework for Price-Comparison Services. Computer Science and Information Systems, Tome 16 (2019) no. 2. http://geodesic.mathdoc.fr/item/CSIS_2019_16_2_a2/