Active Learning Using Smooth Relative Regret Approximations with Applications
Nir Ailon, Ron Begleiter and Esther Ezra JMLR W&CP 23: 19.1 - 19.20, 2012
Abstract
The disagreement coefficient of Hanneke has become a central concept in proving active learning
rates. It has been shown in various ways that a concept class with low complexity together with a
bound on the disagreement coefficient at an optimal solution allows active learning rates that are
superior to passive learning ones.
We present a different tool for pool based active learning which follows from the existence of
a certain uniform version of low disagreement coefficient, but is not equivalent to it. In fact, we
present two fundamental active learning problems of significant interest for which our approach
allows nontrivial active learning bounds. However, any general purpose method relying on the
disagreement coefficient bounds only fails to guarantee any useful bounds for these problems.
The tool we use is based on the learner's ability to compute an estimator of the difference between
the loss of any hypotheses and some fixed "pivotal" hypothesis to within an absolute error
of at most ε times the l1 distance (the disagreement measure) between the two hypotheses. We
prove that such an estimator implies the existence of a learning algorithm which, at each iteration,
reduces its excess risk to within a constant factor. Each iteration replaces the current pivotal hypothesis
with the minimizer of the estimated loss difference function with respect to the previous
pivotal hypothesis. The label complexity essentially becomes that of computing this estimator.
The two applications of interest are: learning to rank from pairwise preferences, and clustering
with side information (a.k.a. semi-supervised clustering). They are both fundamental, and have
started receiving more attention from active learning theoreticians and practitioners.
Keywords: active learning, learning to rank from pairwise preferences, semi-supervised clustering,
clustering with side information, disagreement coefficient, smooth relative regret approximation.
