Harrie Oosterhuis
2024
Consolidating Ranking and Relevance Predictions of Large Language Models through Post-Processing
Le Yan
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Zhen Qin
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Honglei Zhuang
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Rolf Jagerman
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Xuanhui Wang
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Michael Bendersky
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Harrie Oosterhuis
Proceedings of the 2024 Conference on Empirical Methods in Natural Language Processing
The powerful generative abilities of large language models (LLMs) show potential in generating relevance labels for search applications. Previous work has found that directly asking about relevancy, such as "*How relevant is document A to query Q?*”, results in suboptimal ranking. Instead, the pairwise-ranking prompting (PRP) approach produces promising ranking performance through asking about pairwise comparisons, e.g., "*Is document A more relevant than document B to query Q?*”. Thus, while LLMs are effective at their ranking ability, this is not reflected in their relevance label generation.In this work, we propose a post-processing method to consolidate the relevance labels generated by an LLM with its powerful ranking abilities. Our method takes both LLM generated relevance labels and pairwise preferences. The labels are then altered to satisfy the pairwise preferences of the LLM, while staying as close to the original values as possible. Our experimental results indicate that our approach effectively balances label accuracy and ranking performance. Thereby, our work shows it is possible to combine both the ranking and labeling abilities of LLMs through post-processing.
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Co-authors
- Le Yan 1
- Zhen Qin 1
- Honglei Zhuang 1
- Rolf Jagerman 1
- Xuanhui Wang 1
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