表題番号:2020C-607 日付:2021/03/03
研究課題Document-level Sentiment Classification in Japanese Travel Comments of Heterogeneous Sources
研究者所属(当時) 資格 氏名
(代表者) 理工学術院 基幹理工学部 講師 鮑 思雅
研究成果概要
 A user's travel satisfaction is directly and explicitly reflected in their comments compared with the other types of travelogues such as GPS trajectory and check-in data. In this advantage of user comments, it is aiming at shedding lights on determinants of travel satisfaction to serve personalized travel route recommendation. To obtain a large dataset, 479,799 user comments are collected in Tokyo, Kyoto, and Sapporo from three travel websites including TripAdvisor, Jaran, and Ctrip. Prior works have been elaborated on data-source-specific and language-specific analysis. It is found that landmark coverages vary among different websites and users have diverse satisfaction on landmarks depending on their frequently used languages and travel websites. With those findings, a personalized travel route recommendation algorithm is proposed that (1) recommends top-6 personalized landmarks and (2) generates a realistic travel route for a one-day visit. Experimental results confirm the advantages of the proposed algorithm beyond previous studies from the viewpoints of landmark recommendation precision and travel time optimization.