Latest YouTube Video

Sunday, January 10, 2016

Finding a Collective Set of Items: From Proportional Multirepresentation to Group Recommendation. (arXiv:1402.3044v2 [cs.GT] UPDATED)

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.

Donate to arXiv



from cs.AI updates on arXiv.org http://ift.tt/1nx7XFI
via IFTTT

No comments: