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Main Authors: Horchidan, Sonia, Zeiher, Fabian, Shi, Xiangyu, Kalavri, Vasiliki, Boström, Henrik, Kontoyiannis, Ioannis, Carbone, Paris
Format: Preprint
Published: 2026
Subjects:
Online Access:https://arxiv.org/abs/2605.03806
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author Horchidan, Sonia
Zeiher, Fabian
Shi, Xiangyu
Kalavri, Vasiliki
Boström, Henrik
Kontoyiannis, Ioannis
Carbone, Paris
author_facet Horchidan, Sonia
Zeiher, Fabian
Shi, Xiangyu
Kalavri, Vasiliki
Boström, Henrik
Kontoyiannis, Ioannis
Carbone, Paris
contents Querying incomplete knowledge graphs with neural predictors is powerful but dangerous. Errors compound across multi-hop pipelines with no formal bound on the completeness of results. We introduce ConRAD, the first framework to enforce declarative recall guarantees natively within a neural graph database query engine. Given a user-specified risk budget, ConRAD automatically derives per-operator prediction thresholds that satisfy the recall target with finite-sample, distribution-free statistical validity via Conformal Risk Control, while maximizing end-to-end precision. To scale calibration across multi-operator query topologies, we introduce a quantile-space scalarization that reduces intractable high-dimensional threshold searches to a single parameter. We further design the conformal gate, a novel physical operator that dynamically bypasses neural inference when local graph evidence suffices, eliminating unnecessary model inferences in dense graph regions. Evaluated across three benchmarks and three query topologies, ConRAD strictly satisfies all risk budgets, with empirical recall falling below the target by at most 0.046 across all settings. It reduces neural invocations to zero in near-complete graph regions, and achieves precision that matches or exceeds best-case static baselines that offer no guarantees and require manual threshold search.
format Preprint
id arxiv_https___arxiv_org_abs_2605_03806
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publishDate 2026
record_format arxiv
spellingShingle ConRAD: Conformal Risk-Aware Neural Databases
Horchidan, Sonia
Zeiher, Fabian
Shi, Xiangyu
Kalavri, Vasiliki
Boström, Henrik
Kontoyiannis, Ioannis
Carbone, Paris
Databases
Querying incomplete knowledge graphs with neural predictors is powerful but dangerous. Errors compound across multi-hop pipelines with no formal bound on the completeness of results. We introduce ConRAD, the first framework to enforce declarative recall guarantees natively within a neural graph database query engine. Given a user-specified risk budget, ConRAD automatically derives per-operator prediction thresholds that satisfy the recall target with finite-sample, distribution-free statistical validity via Conformal Risk Control, while maximizing end-to-end precision. To scale calibration across multi-operator query topologies, we introduce a quantile-space scalarization that reduces intractable high-dimensional threshold searches to a single parameter. We further design the conformal gate, a novel physical operator that dynamically bypasses neural inference when local graph evidence suffices, eliminating unnecessary model inferences in dense graph regions. Evaluated across three benchmarks and three query topologies, ConRAD strictly satisfies all risk budgets, with empirical recall falling below the target by at most 0.046 across all settings. It reduces neural invocations to zero in near-complete graph regions, and achieves precision that matches or exceeds best-case static baselines that offer no guarantees and require manual threshold search.
title ConRAD: Conformal Risk-Aware Neural Databases
topic Databases
url https://arxiv.org/abs/2605.03806