Reasoning over Public and Private Data in Retrieval-Based Systems

Author:

Arora Simran1,Lewis Patrick2,Fan Angela3,Kahn Jacob4,Ré Christopher5

Affiliation:

1. Stanford University, USA. simran@cs.stanford.edu

2. Cohere, USA. Patrick@cohere.ai

3. Facebook AI Research, France. angelafan@fb.com

4. Facebook AI Research, USA. jacobkahn@fb.com

5. Stanford University, USA. chrismre@cs.stanford.edu

Abstract

Abstract Users an organizations are generating ever-increasing amounts of private data from a wide range of sources. Incorporating private context is important to personalize open-domain tasks such as question-answering, fact-checking, and personal assistants. State-of-the-art systems for these tasks explicitly retrieve information that is relevant to an input question from a background corpus before producing an answer. While today’s retrieval systems assume relevant corpora are fully (e.g., publicly) accessible, users are often unable or unwilling to expose their private data to entities hosting public data. We define the Split Iterative Retrieval (SPIRAL) problem involving iterative retrieval over multiple privacy scopes. We introduce a foundational benchmark with which to study SPIRAL, as no existing benchmark includes data from a private distribution. Our dataset, ConcurrentQA, includes data from distinct public and private distributions and is the first textual QA benchmark requiring concurrent retrieval over multiple distributions. Finally, we show that existing retrieval approaches face significant performance degradations when applied to our proposed retrieval setting and investigate approaches with which these tradeoffs can be mitigated. We release the new benchmark and code to reproduce the results.1

Publisher

MIT Press

Subject

Artificial Intelligence,Computer Science Applications,Linguistics and Language,Human-Computer Interaction,Communication

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