secretaire-inma@uclouvain.be +32 10 47 80 36
Home > Publications > Graph Resistance and Learning from Pairwise Compar...
2019 • Conference Paper

Graph Resistance and Learning from Pairwise Comparisons

Authors:
Hendrickx, Julien , Olchevsky, Alex, Saligrama, Venkatesh
Published in:
PMLR - Proceedings of Machine Learning Research

Volume: 97

We consider the problem of learning the qualities of a collection of items by performing noisy comparisonsamongthem. Followingthestandard paradigm, we assume there is a fixed “comparison graph” and every neighboring pair of items in this graph is compared k times according to the Bradley-Terry-Luce model (where the probability than an item wins a comparison is proportional the item quality). We are interested in how the relative error in quality estimation scales with the comparison graph in the regime where k is large. We prove that, after a known transition period, the relevant graph-theoretic quantity is the square root of the resistance of the comparison graph. Specifically, we provide an algorithm that is minimax optimal. The algorithm has a relative error decaythatscaleswiththesquarerootofthegraph resistance, and provide a matching lower bound (up to log factors). The performance guarantee of our algorithm, both in terms of the graph and the skewness of the item quality distribution, outperforms earlier results.

Related Resources