Sciweavers

ATAL
2010
Springer

Aggregating preferences in multi-issue domains by using maximum likelihood estimators

14 years 9 days ago
Aggregating preferences in multi-issue domains by using maximum likelihood estimators
In this paper, we study a maximum likelihood estimation (MLE) approach to preference aggregation and voting when the set of alternatives has a multi-issue structure, and the voters' preferences are represented by CP-nets. We first consider multi-issue domains in which each issue is binary; for these, we propose a general family of distance-based noise models, of which give an axiomatic characterization. We then propose a more specific family of natural distance-based noise models that are parameterized by a threshold. We show that computing the winner for the corresponding MLE voting rule is NP-hard when the threshold is 1, but can be done in polynomial time when the threshold is equal to the number of issues. Next, we consider general multi-issue domains, and study whether and how issue-by-issue voting rules and sequential voting rules can be represented by MLEs. We first show that issue-byissue voting rules in which each local rule is itself an MLE (resp. a ranking scoring rule...
Lirong Xia, Vincent Conitzer, Jérôme
Added 08 Nov 2010
Updated 08 Nov 2010
Type Conference
Year 2010
Where ATAL
Authors Lirong Xia, Vincent Conitzer, Jérôme Lang
Comments (0)