Recommender system offers personalized suggestions by analyzing user preference. However, the performance falls sharply when it encounters sparse data, especially meets a cold start user. Hotel is such kind of goods that suffers a lot from sparsity issue due to extremely low rating frequency. In order to handle these issues, this paper proposes a novel hotel recommendation framework. The main contribution includes: 1) We combine collaboration filtering (CF) with content-based (CBF) method to overcome sparsity issue, while ensuring high accuracy. 2) Travel intents are introduced to provide additional information for user preference analysis. 3) To provide as broad as possible recommendations, diversity techniques are employed. 4) Several experiments are conducted on the real Ctrip 1 dataset, the results show that the proposed hybrid framework is competitive against classical approaches.
Mahirangi GodakandageSamantha Thelijjagoda
Prashant VipinkataraMadhurima GuptaSaurabh HoodaPrashant GuptaSaurabh GuptaAkhilesh Das GuptaSaurabh GuptaAkhilesh Das GuptaPavel BerkhinC PriyalA TiwariM HoodaAshutosh SrivastavaAashie SaxenaMadhurima SarudhirSapraShradhaAnshul MadhurimahoodaSarudhir ChhabraA SoodM HoodaS DhirS BhatiaS AggarwalD GoswamiM HoodaA ChakravartyA KarVasudhaS BhardwajS DhirM HoodaHarshit KhandelwalMadhurimahooda SarudhirAkash VashishthaMadhurimahooda SarudhirM BhatiaM PandeyN KumarM HoodaAkritiA KumarM BhatiaA GargMadhurimaChandrika SikkaMadhurimahooda SarudhirS MishraS DhirM HoodaS AgarwalM BhatiaM HoodaAnuj MadhurimaKumar ChauhanMadhulika SarudhirV NandanMadhurimaS DhirA GargP RaiM HoodaS DhirM BhatiaA GargSaurabh MishraSarudhir MadhurimahoodaAlisha SharmaMadhulika BhatiaDivakar YadavPritee MadhurimaGurpreet GuptaJyoti KaurMallika SinghAjeet GandhiSingh
Hai LinXiaoyu LiYue CaoHouda LabiodNaveed Ahmad
Lei ZhouCaiquan XiongNa DengLi Shen
Thitiporn NeammaneeSaranya Maneeroj