Publication | Open Access
Finding a Collective Set of Items: From Proportional Multirepresentation to Group Recommendation
138
Citations
36
References
2015
Year
Mathematical ProgrammingK ItemsEngineeringProportional MultirepresentationGame TheoryMarket DesignText MiningOperations ResearchComputational Social ScienceInformation RetrievalData ScienceData MiningPreference LearningAlgorithmic Mechanism DesignDiscrete MathematicsCombinatorial OptimizationDecision TheoryMechanism DesignStatisticsSocial Network AnalysisKnowledge DiscoveryMulti-agent Mechanism DesignFair DivisionCold-start ProblemPreference AggregationMarketingInformation Filtering SystemIntrinsic UtilityGroup RecommendersBusinessK MoviesCollective SetGroup RecommendationDecision ScienceCollaborative FilteringAlgorithmic Game Theory
We consider the following problem: There is a set of items (e.g., movies) and a group of agents (e.g., passengers on a plane); each agent has some intrinsic utility for each of the items. Our goal is to pick a set of K items that maximize the total derived utility of all the agents (i.e., in our example we are to pick K movies that we put on the plane's entertainment system). However, the actual utility that an agent derives from a given item is only a fraction of its intrinsic one, and this fraction depends on how the agent ranks the item among the chosen, available, ones. We provide a formal specification of the model and provide concrete examples and settings where it is applicable. We show that the problem is hard in general, but we show a number of tractability results for its natural special cases.
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