IRAIMar 6

Sensitivity-Aware Retrieval-Augmented Intent Clarification

arXiv:2603.06025v1h-index: 3
Predicted impact top 63% in IR · last 90 daysOriginality Incremental advance
AI Analysis

This work is significant for users and organizations in sensitive domains like healthcare, government, or legal contexts, who need to clarify complex queries while protecting sensitive information in retrieval databases.

This paper addresses the challenge of intent clarification in conversational search systems, particularly when dealing with sensitive information in retrieval-augmented setups. The authors propose a framework to develop a retrieval-augmented conversational agent that acts as a mediator and gatekeeper for sensitive collections, outlining three steps: defining an attack model, designing sensitivity-aware retrieval defenses, and developing evaluation methods for protection-utility trade-offs.

In conversational search systems, a key component is to determine and clarify the intent behind complex queries. We view intent clarification in light of the exploratory search paradigm, where users, through an iterative, evolving process of selection, exploration and retrieval, transform a visceral or conscious need into a formalized one. Augmenting the clarification component with a retrieval step (retrieval-augmented intent clarification) can seriously enhance clarification performance, especially in domains where Large Language Models (LLMs) lack parametric knowledge. However, in more sensitive domains, such as healthcare, government (e.g. FOIA search) or legal contexts, the retrieval database may contain sensitive information that needs protection. In this paper, we explore the research challenge of developing a retrieval-augmented conversational agent that can act as a mediator and gatekeeper for the sensitive collection. To do that, we also need to know what we are protecting and against what. We propose to tackle this research challenge in three steps: 1) define an attack model, 2) design sensitivity-aware defenses on the retrieval level and 3) develop evaluation methods to measure the trade-off between the level of protection and the system's utility.

Foundations

The foundational work for this paper's niche, ranked by how specifically the neighbourhood builds on it — not by global fame.

Your Notes