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COLING
2010

Cross-Market Model Adaptation with Pairwise Preference Data for Web Search Ranking

12 years 11 months ago
Cross-Market Model Adaptation with Pairwise Preference Data for Web Search Ranking
Machine-learned ranking techniques automatically learn a complex document ranking function given training data. These techniques have demonstrated the effectiveness and flexibility required of a commercial web search. However, manually labeled training data (with multiple absolute grades) has become the bottleneck for training a quality ranking function, particularly for a new domain. In this paper, we explore the adaptation of machine-learned ranking models across a set of geographically diverse markets with the market-specific pairwise preference data, which can be easily obtained from clickthrough logs. We propose a novel adaptation algorithm, PairwiseTrada, which is able to adapt ranking models that are trained with multi-grade labeled training data to the target market using the target-market-specific pairwise preference data. We present results demonstrating the efficacy of our technique on a set of commercial search engine data.
Jing Bai, Fernando Diaz, Yi Chang, Zhaohui Zheng,
Added 13 May 2011
Updated 13 May 2011
Type Journal
Year 2010
Where COLING
Authors Jing Bai, Fernando Diaz, Yi Chang, Zhaohui Zheng, Keke Chen
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