In parameterized complexity, it is well-known that a parameterized problem is fixed-parameter tractable if and only if it has a kernel - an instance equivalent to the input instance, whose size is just a function of the parameter. The size of the kernel can be exponential or worse, resulting in a quest for fixed-parameter tractable problems with a polynomial-sized kernel. The developments in machinery to show lower bounds for the sizes of the kernel gave rise to the question of the asymptotically optimum size for the kernel of fixed-parameter tractable problems. In this article, we survey a tool called expansion lemma that helps in reducing the size of the kernel. Its early origin is in the form of Crown Decomposition for obtaining linear kernel for the Vertex Cover problem and the specific lemma was identified as the tool behind an optimal kernel with O(k^2) vertices and edges for the UNDIRECTED FEEDBACK VERTEX SET problem. Since then, several variations and extensions of the tool have been discovered. We survey them along with their applications in this article.
翻译:在参数复杂度方面,众所周知,参数化问题只有在有内核的情况下才能固定参数,只有在有内核时才能固定参数,因为内核的大小相当于输入实例,其大小只是参数的函数。内核的大小可能是指数化的或更小的,从而导致寻找与多分子尺寸内核有关的固定参数可移动的问题。显示内核大小的下界限的机械的发展引起了固定参数内核内核内核的不切实际最佳尺寸问题。在本篇文章中,我们调查了一种称为扩展内核的工具,称为扩展内核,有助于缩小内核的大小。其早期起源是Crown Decomposition,以获得Vertex内核问题的线性内核内核,而特定的内核是用O(k<unk> 2)来显示最佳内核内核的脊和边缘的工具。自此以后,我们发现了该工具的一些变异和扩展。我们沿着该工具的应用进行了调查。</s>