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Differentially Private In-Context Learning with Nearest Neighbor Search

Published: November 6, 2025 | arXiv ID: 2511.04332v1

By: Antti Koskela, Tejas Kulkarni, Laith Zumot

Potential Business Impact:

Protects your private info when AI learns.

Business Areas:
Semantic Search Internet Services

Differentially private in-context learning (DP-ICL) has recently become an active research topic due to the inherent privacy risks of in-context learning. However, existing approaches overlook a critical component of modern large language model (LLM) pipelines: the similarity search used to retrieve relevant context data. In this work, we introduce a DP framework for in-context learning that integrates nearest neighbor search of relevant examples in a privacy-aware manner. Our method outperforms existing baselines by a substantial margin across all evaluated benchmarks, achieving more favorable privacy-utility trade-offs. To achieve this, we employ nearest neighbor retrieval from a database of context data, combined with a privacy filter that tracks the cumulative privacy cost of selected samples to ensure adherence to a central differential privacy budget. Experimental results on text classification and document question answering show a clear advantage of the proposed method over existing baselines.

Page Count
18 pages

Category
Computer Science:
Machine Learning (CS)