动态信息检索:理论框架与应用

Marc Sloan, Jun Wang
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引用次数: 16

摘要

几十年来,概率排序原则及其最近的交互式信息检索变体等理论框架指导了排序和检索算法的发展,但它们无法帮助我们对动态信息检索中的问题进行建模,动态信息检索表现出以下三个特征:一个可观察的用户信号,多个阶段的检索和一个整体的搜索意图。本文提出了一个新的理论框架,用于这些场景下的检索。我们推导了一个通用的动态效用函数来优化这些类型的任务,它考虑了每个阶段的效用和观察用户反馈的概率。我们将我们的框架应用于动态多页搜索场景中TREC数据的实验,作为其有效性的实际演示,并对其使用、局限性进行讨论,并将其与现有框架进行比较。
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Dynamic Information Retrieval: Theoretical Framework and Application
Theoretical frameworks like the Probability Ranking Principle and its more recent Interactive Information Retrieval variant have guided the development of ranking and retrieval algorithms for decades, yet they are not capable of helping us model problems in Dynamic Information Retrieval which exhibit the following three properties; an observable user signal, retrieval over multiple stages and an overall search intent. In this paper a new theoretical framework for retrieval in these scenarios is proposed. We derive a general dynamic utility function for optimizing over these types of tasks, that takes into account the utility of each stage and the probability of observing user feedback. We apply our framework to experiments over TREC data in the dynamic multi page search scenario as a practical demonstration of its effectiveness and to frame the discussion of its use, its limitations and to compare it against the existing frameworks.
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