Model adaptation via model interpolation and boosting for web search ranking
Jianfeng Gao(Microsoft Research Asia (China)), Hongyan Zhou(University of North Carolina at Chapel Hill), Yi Su(Johns Hopkins University), Krysta M. Svore(Microsoft (United States)), Qiang Wu(Microsoft (United States)), Nazan Khan(Microsoft (United States)), Chris Burges, Shalin Shah(Microsoft (United States))
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