Winning The Transfer Learning Track of Yahoo!’s Learning To Rank Challenge
with YetiRank
A. Gulin, I. Kuralenok & D. Pavlov; JMLR W&CP 14:63–76,
2011.
Abstract
The problem of ranking the documents according to their relevance to a
given query is a hot topic in information retrieval. Most learning-to-rank methods are
supervised and use human editor judgements for learning. In this paper, we introduce
novel pairwise method called YetiRank that modifies Friedman’s gradient boosting
method in part of gradient computation for optimization and takes uncertainty in human
judgements into account. Proposed enhancements allowed YetiRank to outperform many
state-of-the-art learning to rank methods in offline experiments as well as take the first place in
the second track of the Yahoo! learning-to-rank contest. Even more remarkably, the
first result in the learning to rank competition that consisted of a transfer learning
task was achieved without ever relying on the bigger data from the “transfer-from”
domain.
Page last modified on Wed Jan 26 10:37:00 2011.