Counterfactual Query Rewriting to Use Historical Relevance Feedback
February 06, 2025 Β· Declared Dead Β· π European Conference on Information Retrieval
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Authors
JΓΌri Keller, Maik FrΓΆbe, Gijs Hendriksen, Daria Alexander, Martin Potthast, Matthias Hagen, Philipp Schaer
arXiv ID
2502.03891
Category
cs.IR: Information Retrieval
Citations
2
Venue
European Conference on Information Retrieval
Last Checked
4 months ago
Abstract
When a retrieval system receives a query it has encountered before, previous relevance feedback, such as clicks or explicit judgments can help to improve retrieval results. However, the content of a previously relevant document may have changed, or the document might not be available anymore. Despite this evolved corpus, we counterfactually use these previously relevant documents as relevance signals. In this paper we proposed approaches to rewrite user queries and compare them against a system that directly uses the previous qrels for the ranking. We expand queries with terms extracted from the previously relevant documents or derive so-called keyqueries that rank the previously relevant documents to the top of the current corpus. Our evaluation in the CLEF LongEval scenario shows that rewriting queries with historical relevance feedback improves the retrieval effectiveness and even outperforms computationally expensive transformer-based approaches.
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