神经红外查询性能预测:我们还在那里吗?

G. Faggioli, Thibault Formal, S. Marchesin, S. Clinchant, N. Ferro, Benjamin Piwowarski
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引用次数: 6

摘要

信息检索中的评价依赖于事后经验程序,这是一种耗时且昂贵的操作。为了缓解这种情况,已经开发了查询性能预测(Query Performance Prediction, QPP)模型来估计系统的性能,而不需要人为的相关性判断。这些模型通常依赖于查询和语料库的词法特征,已经应用于传统的稀疏红外方法,并取得了不同程度的成功。随着神经IR和大型预训练语言模型的出现,检索范式已明显转向更多的语义信号。在这项工作中,我们研究和分析了当前的QPP模型在多大程度上可以预测此类系统的性能。我们的实验考虑了7种传统的词袋和7种基于bert的IR方法,以及19种最先进的qpp,它们在两个集Deep Learning '19和Robust '04上进行了评估。我们的研究结果表明,qpp在神经IR系统上的表现在统计上明显更差。在语义信号突出的环境中(例如,段落检索),它们在神经模型上的表现与词袋方法相比下降了10%。最重要的是,在面向词汇的场景中,qpp无法预测神经IR系统在那些与传统方法差异最大的查询上的性能。
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Query Performance Prediction for Neural IR: Are We There Yet?
Evaluation in Information Retrieval relies on post-hoc empirical procedures, which are time-consuming and expensive operations. To alleviate this, Query Performance Prediction (QPP) models have been developed to estimate the performance of a system without the need for human-made relevance judgements. Such models, usually relying on lexical features from queries and corpora, have been applied to traditional sparse IR methods - with various degrees of success. With the advent of neural IR and large Pre-trained Language Models, the retrieval paradigm has significantly shifted towards more semantic signals. In this work, we study and analyze to what extent current QPP models can predict the performance of such systems. Our experiments consider seven traditional bag-of-words and seven BERT-based IR approaches, as well as nineteen state-of-the-art QPPs evaluated on two collections, Deep Learning '19 and Robust '04. Our findings show that QPPs perform statistically significantly worse on neural IR systems. In settings where semantic signals are prominent (e.g., passage retrieval), their performance on neural models drops by as much as 10% compared to bag-of-words approaches. On top of that, in lexical-oriented scenarios, QPPs fail to predict performance for neural IR systems on those queries where they differ from traditional approaches the most.
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