Polynomial Kernels with Reachability for Weighted $d$-Matroid Intersection
Chien-Chung Huang, Naonori Kakimura, Yusuke Kobayashi, and Tatsuya Terao

TL;DR
This paper introduces a new polynomial kernelization technique for the weighted d-matroid intersection problem, expanding kernelization results to more general matroids and enabling efficient algorithms.
Contribution
Develops a novel kernelization method for general matroids, achieving near-optimal kernel size for weighted d-matroid intersection problems.
Findings
Kernel of size ~O(k^d) for specific matroid classes
Extension to graphic, cographic, and transversal matroids
Kernel of pseudo-polynomial size for laminar matroids
Abstract
This paper studies randomized polynomial kernelization for the weighted -matroid intersection problem. While the problem is known to have a kernel of size where is the solution size, the existence of a polynomial kernel is not known, except for the cases when either all the given matroids are partition matroids~(i.e., the -dimensional matching problem) or all the given matroids are linearly representable. The main contribution of this paper is to develop a new kernelization technique for handling general matroids. We first show that the weighted -matroid intersection problem admits a polynomial kernel when one matroid is arbitrary and the other matroids are partition matroids. Interestingly, the obtained kernel has size , which matches the optimal bound~(up to logarithmic factors) for the -dimensional matching problem. This…
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Taxonomy
TopicsComplexity and Algorithms in Graphs · Stochastic Gradient Optimization Techniques · Facility Location and Emergency Management
