
The problem of ranking, in which the goal is to learn a real-valued ranking function that induces a ranking or ordering over an instance space, has recently gained attention in mahine learning. We define a model of learnability for ranking functions in a particular setting of the ranking problem known as the bipartite ranking problem, and derive a number of results in this model. Our first main result provides a sufficient condition for the learnability of a class of ranking functions F we show that F in learnable in its bipartite rank-shatter coefficients, which measure the richness of a ranking function class in the same as do the standard VC-dimension related shatter coefficients (growth function) for classes of classification functions, d not grow too quickly. Our second main result gives a necessary condition for learnability: we define a new combinatorial parameter for a class of ranking functions F that we term the rank dimension of F, and show that F is learnable only if its rank dimersion in finite. Finally, we investigate questions of the computational complexity of learning ranking functions.
@inproceedings{AgarwalRo05,
author = {S. Agarwal and D. Roth},
title = {Learnability of Bipartite Ranking Functions},
booktitle = {COLT},
pages = {16--31},
year = {2005},
acceptance = {45/119 (37.8\%)},
url = " http://cogcomp.cs.illinois.edu/papers/Agarwalro05.pdf",
funding = {ITR-BI,ITR-MIT,TRECC},
projects = {LT,RANK},
}