As users increasingly input confidential information in their queries-often through longer and more detailed prompts when interfacing with generative Information Retrieval Systems (IRSs) and Artificial Intelligence (AI) tools-the need for effective query protection deserves further investigation in current research. With respect to the literature, this paper examines whether the use of generative Large Language Models (LLMs) offers a viable solution in light of various state-of-the-art techniques aimed at safeguarding queries from the user’s privacy perspective. In particular, we investigate the effectiveness of different prompts inspired by distinct confusion-based techniques for query protection. Our study assesses how well this solution can protect user privacy while simultaneously maintaining a satisfactory trade-off with retrieval effectiveness.

Herranz-Celotti, L., Guembe, B., Livraga, G., Viviani, M. (2025). Can Generative AI Adequately Protect Queries? Analyzing the Trade-Off Between Privacy Awareness and Retrieval Effectiveness. In Advances in Information Retrieval (pp.353-361) [10.1007/978-3-031-88714-7_34].

Can Generative AI Adequately Protect Queries? Analyzing the Trade-Off Between Privacy Awareness and Retrieval Effectiveness

Herranz-Celotti, Luca;Viviani, Marco
2025

Abstract

As users increasingly input confidential information in their queries-often through longer and more detailed prompts when interfacing with generative Information Retrieval Systems (IRSs) and Artificial Intelligence (AI) tools-the need for effective query protection deserves further investigation in current research. With respect to the literature, this paper examines whether the use of generative Large Language Models (LLMs) offers a viable solution in light of various state-of-the-art techniques aimed at safeguarding queries from the user’s privacy perspective. In particular, we investigate the effectiveness of different prompts inspired by distinct confusion-based techniques for query protection. Our study assesses how well this solution can protect user privacy while simultaneously maintaining a satisfactory trade-off with retrieval effectiveness.
poster + paper
Privacy, Query Protection, Generative Artificial Intelligence, Large Language Models
English
The 47th European Conference on Information Retrieval (ECIR 2025) - April 6–10, 2025
2025
Advances in Information Retrieval
9783031887130
2025
15574 LNCS
353
361
reserved
Herranz-Celotti, L., Guembe, B., Livraga, G., Viviani, M. (2025). Can Generative AI Adequately Protect Queries? Analyzing the Trade-Off Between Privacy Awareness and Retrieval Effectiveness. In Advances in Information Retrieval (pp.353-361) [10.1007/978-3-031-88714-7_34].
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/10281/548683
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