a2137a2ae8e39b5002a3f8909ecb88fe-Paper.pdf
–Neural Information Processing Systems
Some crowdsourcing platforms ask workers to express their opinions by approving a set of k good alternatives. It seems that the only reasonable way to aggregate these k-approval votes is the approval voting rule, which simply counts the number of times each alternative was approved. We challenge this assertion by proposing a probabilistic framework of noisy voting, and asking whether approval voting yields an alternative that is most likely to be the best alternative, given k-approval votes. While the answer is generally positive, our theoretical and empirical results call attention to situations where approval voting is suboptimal.
Neural Information Processing Systems
Feb-7-2025, 18:38:39 GMT
- Genre:
- Research Report > New Finding (0.46)