使用判别查询模型的查询锚定

Saar Kuzi, Anna Shtok, Oren Kurland
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引用次数: 1

摘要

基于伪反馈的查询模型是从为查询执行的初始搜索排名最高的文档的结果列表中导出的。由于结果列表通常包含许多不相关的信息,因此使用各种技术将查询模型锚定到查询。我们提出了一种新的{\em无监督}判别查询模型,该模型可以通过本文提出的几种方法用于现有查询模型的查询锚定。该模型是使用学习排序方法从结果列表中导出的,并构成了初始排序的基于判别词的表示。我们表明,将我们的方法应用于生成查询模型可以提高检索性能。
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Query Anchoring Using Discriminative Query Models
Pseudo-feedback-based query models are induced from a result list of the documents most highly ranked by initial search performed for the query. Since the result list often contains much non-relevant information, query models are anchored to the query using various techniques. We present a novel {\em unsupervised} discriminative query model that can be used, by several methods proposed herein, for query anchoring of existing query models. The model is induced from the result list using a learning-to-rank approach, and constitutes a discriminative term-based representation of the initial ranking. We show that applying our methods to generative query models can improve retrieval performance.
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