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Assessing and improving recommender systems to deal with user cold-start problem
Author(s) -
Crícia Paixão
Publication year - 2017
Language(s) - English
Resource type - Dissertations/theses
DOI - 10.14393/ufu.te.2017.66
Subject(s) - recommender system , cold start (automotive) , computer science , pairwise comparison , preference , perception , information retrieval , process (computing) , preference elicitation , human–computer interaction , data science , world wide web , artificial intelligence , engineering , aerospace engineering , neuroscience , biology , economics , microeconomics , operating system
Recommender systems are in our everyday life. The recommendation methods have as main purpose to predict preferences for new items based on user’s past preferences. The research related to this topic seeks among other things to discuss user cold-start problem, which is the challenge of recommending to users with few or no preferences records. One way to address cold-start issues is to infer the missing data relying on side in formation. Side information of different types has been explored in researches. Some studies use social information combined with users’ preferences, others user click behav ior, location-based information, user’s visual perception, contextual information, etc. The typical approach is to use side information to build one prediction model for each cold user. Due to the inherent complexity of this prediction process, for full cold-start user in particular, the performance of most recommender systems falls a great deal. We, rather, propose that cold users are best served by models already built in system. In this thesis we propose 4 approaches to deal with user cold-start problem using existing models available for analysis in the recommender systems. We cover the follow aspects: □ Embedding social information into traditional recommender systems: We investi gate the role of several social metrics on pairwise preference recommendations and provide the hrst steps towards a general framework to incorporate social information in traditional approaches. □ Improving recommendation with visual perception similarities: We extract networks connecting users with similar visual perception and use them to come up with prediction models that maximize the information gained from cold users. □ Analyzing the benehts of general framework to incorporate networked information into recommender systems: Representing different types of side information as a user network, we investigated how to incorporate networked information into recommender systems to understand the benehts of it in the context of cold user recommendation. □ Analyzing the impact of prediction model selection for cold users: The last proposal consider that without side information the system will recommend to cold users based on the switch of models already built in system. We evaluated the proposed approaches in terms of prediction quality and ranking quality in real-world datasets under different recommendation domains. The experiments showed that our approaches achieve better results than the comparison methods.

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