Fast Pairwise Query Selection for Large-Scale Active Learning to Rank

ICDM(2013)

引用 18|浏览41
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摘要
Pair wise learning to rank algorithms (such as Rank SVM) teach a machine how to rank objects given a collection of ordered object pairs. However, their accuracy is highly dependent on the abundance of training data. To address this limitation and reduce annotation efforts, the framework of active pair wise learning to rank was introduced recently. However, in such a framework the number of possible query pairs increases quadratic ally with the number of instances. In this work, we present the first scalable pair wise query selection method using a layered (two-step) hashing framework. The first step relevance hashing aims to retrieve the strongly relevant or highly ranked points, and the second step uncertainty hashing is used to nominate pairs whose ranking is uncertain. The proposed framework aims to efficiently reduce the search space of pair wise queries and can be used with any pair wise learning to rank algorithm with a linear ranking function. We evaluate our approach on large-scale real problems and show it has comparable performance to exhaustive search. The experimental results demonstrate the effectiveness of our approach, and validate the efficiency of hashing in accelerating the search of massive pair wise queries.
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关键词
active learning,algorithm ranking,scalable pair wise query selection method,learning (artificial intelligence),learning to rank,uncertainty hashing,fast pairwise query selection,hashing,large-scale active learning,layered hashing framework,active pair wise learning,file organisation,search space reduction,query processing,learning artificial intelligence
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