English

Full-conformal novelty detection

Methodology 2026-04-21 v2

Abstract

This paper presents a powerful methodology for flexible full-data nonparametric novelty detection that offers distribution-free false discovery rate (FDR) control guarantees. Building on the full conformal inference framework and the concept of e-values, we introduce full conformal e-values to quantify evidence for novelty relative to a given reference dataset. These e-values are then utilized by carefully crafted multiple testing procedures to identify a set of novel units out-of-sample with provable finite-sample FDR control. We showcase several instantiations of e-values, including those which employ a data-driven model selection strategy to amplify power. Furthermore, our framework is extended to address distribution shift, accommodating scenarios where novelty detection must be performed on data drawn from a shifted distribution relative to the reference dataset. In all settings, our method can perform powerfully -- outperforming existing novelty detection methods -- even with limited amounts of reference data; this is illustrated by empirical evaluations on synthetic data and an application to a malicious LLM prompts dataset.

Keywords

Cite

@article{arxiv.2501.02703,
  title  = {Full-conformal novelty detection},
  author = {Junu Lee and Ilia Popov and Zhimei Ren},
  journal= {arXiv preprint arXiv:2501.02703},
  year   = {2026}
}
R2 v1 2026-06-28T20:57:05.107Z