Optimal Sample Complexity of M-wise Data for Top-K Ranking
Minje Jang, Sunghyun Kim, Changho Suh, Sewoong Oh
–Neural Information Processing Systems
We explore the top-K rank aggregation problem in which one aims to recover a consistent ordering that focuses on top-K ranked items based on partially revealed preference information. We examine an M-wise comparison model that builds on the Plackett-Luce (PL) model where for each sample, M items are ranked according to their perceived utilities modeled as noisy observations of their underlying true utilities. As our result, we characterize the minimax optimality on the sample size for top-K ranking. The optimal sample size turns out to be inversely proportional to M. We devise an algorithm that effectively converts M-wise samples into pairwise ones and employs a spectral method using the refined data.
Neural Information Processing Systems
Oct-4-2024, 03:31:13 GMT