Generating Effective Health-Related Queries for Promoting Reliable Search Results
Misinformation on the Internet poses significant risks to users seeking health information. This paper addresses the challenge of generating effective health-related queries to promote reliable search results. We propose a method leveraging Large Language Models to generate synthetic narratives that guide the creation of alternative queries. These queries are designed to retrieve
more helpful and fewer harmful documents compared to those retrieved by the original user queries. We evaluate the effectiveness of these queries using classic and neural retrieval models across multiple datasets, demonstrating promising improvements in retrieving reputable content.
keywords: Query Variants, Large Language Models, Health Misinformation
Publication: Congress
1752234688871
July 11, 2025
/research/publications/generating-effective-health-related--queries-for-promoting-reliable-search-results
Misinformation on the Internet poses significant risks to users seeking health information. This paper addresses the challenge of generating effective health-related queries to promote reliable search results. We propose a method leveraging Large Language Models to generate synthetic narratives that guide the creation of alternative queries. These queries are designed to retrieve
more helpful and fewer harmful documents compared to those retrieved by the original user queries. We evaluate the effectiveness of these queries using classic and neural retrieval models across multiple datasets, demonstrating promising improvements in retrieving reputable content. - Xiana Carrera, Marcos Fernández-Pichel, David E. Losada - 10.1145/3726302.3730202
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