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Structured Learning of Two-Level Dynamic Rankings

机译:两级动态排名的结构化学习

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摘要

For ambiguous queries, conventional retrieval systems are bound by two conflicting goals. On the one hand, they should diversify and strive to present results for as many query intents as possible. On the other hand, they should provide depth for each intent by displaying more than a single result. Since both diversity and depth cannot be achieved simultaneously in the conventional static retrieval model, we propose a new dynamic ranking approach. In particular, our proposed two-level dynamic ranking model allows users to adapt the ranking through interaction, thus overcoming the constraints of presenting a one-size-fits-all static ranking. In this model, a user's interactions with the first-level ranking are used to infer this user's intent, so that second-level rankings can be inserted to provide more results relevant to this intent. Unlike previous dynamic ranking models, we provide an algorithm to efficiently compute dynamic rankings with provable approximation guarantees. We also propose the first principled algorithm for learning dynamic ranking functions from training data. In addition to the theoretical results, we provide empirical evidence demonstrating the gains in retrieval quality over conventional approaches.
机译:对于含糊不清的查询,传统的检索系统受到两个冲突目标的束缚。一方面,他们应该尽可能多种化并努力为结果提供尽可能多的查询意图。另一方面,它们应该通过显示超过单个结果来为每个意图提供深度。由于在传统的静态检索模型中不能同时实现多样性和深度,因此我们提出了一种新的动态排名方法。特别地,我们提出的双层动态排名模型允许用户通过交互调整排名,从而克服呈现单尺寸适合所有静态排名的约束。在该模型中,用户与第一级别排名的交互用于推断该用户的意图,从而可以插入第二级别排名以提供与此目的相关的更多结果。与以前的动态排名模型不同,我们提供了一种算法,可以有效地计算动态排名,具有可提供的近似保证。我们还提出了第一个主要的算法来从训练数据学习动态排名功能。除了理论结果外,我们还提供了证明在传统方法中检索质量的收益的经验证据。

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