A more versatile model for enumerative kernelization: a case study for Vertex Cover
Marin Bougeret, Guilherme C. M. Gomes, Ignasi Sau

TL;DR
This paper introduces a new, more flexible model for enumeration kernelization called polynomial-delay kernels, enhancing the ability to list solutions efficiently for problems like Vertex Cover.
Contribution
It proposes a novel polynomial-delay kernel model, develops a generic framework for vertex-subset problems, and applies it to Vertex Cover, simplifying existing kernelization approaches.
Findings
The new PD kernel model is more flexible than previous models.
The framework can convert decision kernels into PD kernels of the same size.
Applied to Vertex Cover, the approach simplifies kernelization for various parameters.
Abstract
Enumerative kernelization is a recent promising at the intersection of parameterized complexity and enumeration algorithms, with two proposed models. The first, known as enum-kernels and due to Creignou et al., was too permissive, leading to constant-sized kernels for every problem solvable with FPT-delay. To remedy this, Golovach et al. proposed the polynomial-delay enumeration kernelization model that, while addressing the shortcoming of the previous one, appears to be too strict, which we believe is a central reason for the slow development of the area. In this paper, we propose a new model for enumeration kernels, which we have called polynomial-delay (PD) kernels. It is more flexible than Golovach et al.'s kernels while still preserving their qualities; informally, it allows us to ignore ``bad'' solutions of the compressed instance when producing the solution set of the input…
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