JSAI2023

Presentation information

General Session

General Session » GS-4 Web intelligence

[4L2-GS-4] Web intelligence

Fri. Jun 9, 2023 12:00 PM - 1:40 PM Room L (C2)

座長:廣中詩織(京都大学) [現地]

12:20 PM - 12:40 PM

[4L2-GS-4-02] Cross-domain Recommendation using Gromov--Wasserstein distance

〇Yusuke Kumagae1, Yuya Nozawa2, Masataka Ushiku1, Sho Yokoi3,4 (1. Hakuhodo DY Holdings Inc., 2. Hakuhodo DY Media Partners Inc., 3. Tohoku University, 4. RIKEN)

Keywords:Recommendataion, Optimal Transport, Cross-domain Recommendation, Gromov--Wasserstein distance

A Cross-domain recommendation refers to a variety of item recommendation tasks that endeavor to suggest items to users across domains. This recommendation technique comprises various settings. In particular, this paper addresses a situation in which neither users nor items are shared in both domains. In such a scenario, it becomes challenging to apply traditional recommendation techniques since obtaining the similarity between users and items across domains is not straightforward. To tackle this problem, we propose a cross-domain recommendation approach based on the assumption that a group of users with shared preferences in one domain will also exhibit similar preferences in another domain. Our method utilizes the Gromov--Wasserstein distance to determine the similarity of users across domains. Through experiments conducted on multiple real-world data sets, we demonstrate the efficacy of our proposed method.

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