Spectral Methods for Ranking with Scarce Data

07/02/2020
by   Umang Varma, et al.
0

Given a number of pairwise preferences of items, a common task is to rank all the items. Examples include pairwise movie ratings, New Yorker cartoon caption contests, and many other consumer preferences tasks. What these settings have in common is two-fold: a scarcity of data (it may be costly to get comparisons for all the pairs of items) and additional feature information about the items (e.g., movie genre, director, and cast). In this paper we modify a popular and well studied method, RankCentrality for rank aggregation to account for few comparisons and that incorporates additional feature information. This method returns meaningful rankings even under scarce comparisons. Using diffusion based methods, we incorporate feature information that outperforms state-of-the-art methods in practice. We also provide improved sample complexity for RankCentrality in a variety of sampling schemes.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
10/08/2021

Adaptive Sampling for Heterogeneous Rank Aggregation from Noisy Pairwise Comparisons

In heterogeneous rank aggregation problems, users often exhibit various ...
research
01/21/2016

Data-driven Rank Breaking for Efficient Rank Aggregation

Rank aggregation systems collect ordinal preferences from individuals to...
research
11/06/2018

How Many Pairwise Preferences Do We Need to Rank A Graph Consistently?

We consider the problem of optimal recovery of true ranking of n items f...
research
04/27/2015

Spectral MLE: Top-K Rank Aggregation from Pairwise Comparisons

This paper explores the preference-based top-K rank aggregation problem....
research
04/03/2015

Learning Mixed Membership Mallows Models from Pairwise Comparisons

We propose a novel parameterized family of Mixed Membership Mallows Mode...
research
06/12/2019

Sorted Top-k in Rounds

We consider the sorted top-k problem whose goal is to recover the top-k ...
research
12/27/2016

Monte Carlo Sort for unreliable human comparisons

Algorithms which sort lists of real numbers into ascending order have be...

Please sign up or login with your details

Forgot password? Click here to reset