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A Novel Framework for Ranking Model Adaptation

机译:排名模型适应的新框架

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Domain adaptation is an important problem in learning to rank due to the lack of training data in a new search task. Recently, an approach based on instance weighting and pairwise ranking algorithms has been proposed to address the problem by learning a ranking model for a target domain only using training data from a source domain. In this paper, we propose a novel framework which extends the previous work using a listwise ranking algorithm for ranking adaptation. Our framework firstly estimates the importance weight of a query in the source domain. Then, the importance weight is incorporated into the state-of-the-art listwise ranking algorithm, known as AdaRank. The framework is evaluated on the Letor3.0 benchmark dataset. The results of experiment demonstrate that it can significantly outperform the baseline model which is directly trained on the source domain, and most of the time not significantly worse than the optimal model which is trained on the target domain.
机译:由于在新的搜索任务中缺少训练数据,因此领域适应是学习排名的重要问题。近来,已经提出了一种基于实例加权和成对排名算法的方法,以通过仅使用来自源域的训练数据来学习目标域的排名模型来解决该问题。在本文中,我们提出了一个新颖的框架,该框架使用基于列表的排名算法对适应度进行排名,扩展了先前的工作。我们的框架首先估算源域中查询的重要性权重。然后,将重要性权重合并到称为AdaRank的最新列表排序算法中。该框架在Letor3.0基准数据集上进行评估。实验结果表明,它可以大大优于直接在源域上训练的基线模型,并且在大多数情况下不会明显比在目标域上训练的最优模型差。

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