Saved in:
Bibliographic Details
Main Authors: Weißl, Oliver, Riccio, Vincenzo, Kacianka, Severin, Stocco, Andrea
Format: Preprint
Published: 2026
Subjects:
Online Access:https://arxiv.org/abs/2601.15041
Tags: Add Tag
No Tags, Be the first to tag this record!
_version_ 1866908779827691520
author Weißl, Oliver
Riccio, Vincenzo
Kacianka, Severin
Stocco, Andrea
author_facet Weißl, Oliver
Riccio, Vincenzo
Kacianka, Severin
Stocco, Andrea
contents The increasing deployment of deep learning systems requires systematic evaluation of their reliability in real-world scenarios. Traditional gradient-based adversarial attacks introduce small perturbations that rarely correspond to realistic failures and mainly assess robustness rather than functional behavior. Generative test generation methods offer an alternative but are often limited to simple datasets or constrained input domains. Although diffusion models enable high-fidelity image synthesis, their computational cost and limited controllability restrict their applicability to large-scale testing. We present HyNeA, a generative testing method that enables direct and efficient control over diffusion-based generation. HyNeA provides dataset-free controllability through hypernetworks, allowing targeted manipulation of the generative process without relying on architecture-specific conditioning mechanisms or dataset-driven adaptations such as fine-tuning. HyNeA employs a distinct training strategy that supports instance-level tuning to identify failure-inducing test cases without requiring datasets that explicitly contain examples of similar failures. This approach enables the targeted generation of realistic failure cases at substantially lower computational cost than search-based methods. Experimental results show that HyNeA improves controllability and test diversity compared to existing generative test generators and generalizes to domains where failure-labeled training data is unavailable.
format Preprint
id arxiv_https___arxiv_org_abs_2601_15041
institution arXiv
publishDate 2026
record_format arxiv
spellingShingle HyperNet-Adaptation for Diffusion-Based Test Case Generation
Weißl, Oliver
Riccio, Vincenzo
Kacianka, Severin
Stocco, Andrea
Machine Learning
Software Engineering
The increasing deployment of deep learning systems requires systematic evaluation of their reliability in real-world scenarios. Traditional gradient-based adversarial attacks introduce small perturbations that rarely correspond to realistic failures and mainly assess robustness rather than functional behavior. Generative test generation methods offer an alternative but are often limited to simple datasets or constrained input domains. Although diffusion models enable high-fidelity image synthesis, their computational cost and limited controllability restrict their applicability to large-scale testing. We present HyNeA, a generative testing method that enables direct and efficient control over diffusion-based generation. HyNeA provides dataset-free controllability through hypernetworks, allowing targeted manipulation of the generative process without relying on architecture-specific conditioning mechanisms or dataset-driven adaptations such as fine-tuning. HyNeA employs a distinct training strategy that supports instance-level tuning to identify failure-inducing test cases without requiring datasets that explicitly contain examples of similar failures. This approach enables the targeted generation of realistic failure cases at substantially lower computational cost than search-based methods. Experimental results show that HyNeA improves controllability and test diversity compared to existing generative test generators and generalizes to domains where failure-labeled training data is unavailable.
title HyperNet-Adaptation for Diffusion-Based Test Case Generation
topic Machine Learning
Software Engineering
url https://arxiv.org/abs/2601.15041