Maudet, Nicolas
Possible Winners when New Candidates Are Added: The Case of Scoring Rules
Chevaleyre, Yann (University of Paris-Dauphine) | Lang, Jérôme (University of Paris-Dauphine) | Maudet, Nicolas (University of Paris-Dauphine) | Monnot, Jérôme (University of Paris-Dauphine)
In some voting situations, some new candidates may show up in the course of the process. In this case, we may want to determine which of the initial candidates are possible winners, given that a fixed number k of new candidates will be added. Focusing on scoring rules, we give complexity results for the above possible winner problem.
Compiling the Votes of a Subelectorate
Chevaleyre, Yann (LAMSADE, Univ. Paris-Dauphine) | Lang, Jérôme (LAMSADE, Univ. Paris-Dauphine) | Maudet, Nicolas (LAMSADE, Univ. Paris-Dauphine) | Ravilly-Abadie, Guillaume (LAMSADE, Univ. Paris-Dauphine)
In many practical contexts where a number of agents have to find a common decision, the votes do not come all together at the same time. In such situations, we may want to preprocess the information given by the subelectorate (consisting of the voters who have expressed their votes) so as to ``compile'' the known votes for the time when the latecomers have expressed their votes. We study the amount of space necessary for such a compilation, as a function of the voting rule, the number of candidates, and the number of votes already known. We relate our results to existing work, especially on communication complexity.
Preference Handling in Combinatorial Domains: From AI to Social Choice
Chevaleyre, Yann (LAMSADE, Université Paris-Dauphine) | Endriss, Ulle (ILLC, University of Amsterdam) | Lang, Jérôme (LAMSADE, Université Paris-Dauphine) | Maudet, Nicolas (LAMSADE, Université Paris-Dauphine)
In both individual and collective decision making, the space of alternatives from which the agent (or the group of agents) has to choose often has a combinatorial (or multi-attribute) structure. We give an introduction to preference handling in combinatorial domains in the context of collective decision making, and show that the considerable body of work on preference representation and elicitation that AI researchers have been working on for several years is particularly relevant. These issues belong to a larger field, known as computational social choice, that brings together ideas from AI and social choice theory, to investigate mechanisms for collective decision making from a computational point of view. We conclude by briefly describing some of the other research topics studied in computational social choice.
Preference Handling in Combinatorial Domains: From AI to Social Choice
Chevaleyre, Yann (LAMSADE, Université Paris-Dauphine) | Endriss, Ulle (ILLC, University of Amsterdam) | Lang, Jérôme (LAMSADE, Université Paris-Dauphine) | Maudet, Nicolas (LAMSADE, Université Paris-Dauphine)
In both individual and collective decision making, the space of alternatives from which the agent (or the group of agents) has to choose often has a combinatorial (or multi-attribute) structure. We give an introduction to preference handling in combinatorial domains in the context of collective decision making, and show that the considerable body of work on preference representation and elicitation that AI researchers have been working on for several years is particularly relevant. After giving an overview of languages for compact representation of preferences, we discuss problems in voting in combinatorial domains, and then focus on multiagent resource allocation and fair division. These issues belong to a larger field, known as computational social choice, that brings together ideas from AI and social choice theory, to investigate mechanisms for collective decision making from a computational point of view. We conclude by briefly describing some of the other research topics studied in computational social choice.