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Date: 2018-10-25 09:08:21Collective intelligence Information systems Information science Information E-commerce Computing Recommender system Cold start Food Preference elicitation Nutrition Personalization | Yum-Me: A Personalized Nutrient-Based Meal Recommender System LONGQI YANG, Cornell Tech, Cornell University CHENG-KANG HSIEH, University of California, Los Angeles HONGJIAN YANG and JOHN P. POLLAK, Cornell Tech, CornellAdd to Reading ListSource URL: www.cs.cornell.eduDownload Document from Source WebsiteFile Size: 2,71 MBShare Document on Facebook |
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