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A Study of Collection-Based Features for Adapting the Balance Parameter in Pseudo Relevance Feedback

机译:基于集合的伪相关反馈中平衡参数调整特征研究

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Pseudo-relevance feedback (PRF) is an effective technique to improve the ad-hoc retrieval performance. For PRF methods, how to optimize the balance parameter between the original query model and feedback model is an important but difficult problem. Traditionally, the balance parameter is often manually tested and set to a fixed value across collections and queries. However, due to the difference among collections and individual queries, this parameter should be tuned differently. Recent research has studied various query based and feedback documents based features to predict the optimal balance parameter for each query on a specific collection, through a learning approach based on logistic regression. In this paper, we hypothesize that characteristics of collections are also important for the prediction. We propose and systematically investigate a series of collection-based features for queries, feedback documents and candidate expansion terms. The experiments show that our method is competitive in improving retrieval performance and particularly for cross-collection prediction, in comparison with the state-of-the-art approaches.
机译:伪相关反馈(PRF)是一种提高即席检索性能的有效技术。对于PRF方法,如何优化原始查询模型和反馈模型之间的平衡参数是一个重要但困难的问题。传统上,balance参数通常是手动测试的,并跨集合和查询设置为固定值。但是,由于集合和单个查询之间的差异,应该对此参数进行不同的调整。最近的研究已经研究了各种基于查询和基于反馈文档的功能,以通过基于逻辑回归的学习方法来预测特定集合中每个查询的最佳平衡参数。在本文中,我们假设集合的特征对于预测也很重要。我们提出并系统地研究了一系列基于集合的查询,反馈文档和候选扩展术语的功能。实验表明,与最新方法相比,我们的方法在提高检索性能(尤其是交叉收集预测)方面具有竞争力。

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