Graph sketching is a powerful paradigm for analyzing graph structure via linear measurements introduced by Ahn, Guha, and McGregor (SODA'12) that has since found numerous applications in streaming, distributed computing, and massively parallel algorithms, among others. Graph sketching has proven to be quite successful for various problems such as connectivity, minimum spanning trees, edge or vertex connectivity, and cut or spectral sparsifiers. Yet, the problem of approximating shortest path metric of a graph, and specifically computing a spanner, is notably missing from the list of successes. This has turned the status of this fundamental problem into one of the most longstanding open questions in this area. We present a partial explanation of this lack of success by proving a strong lower bound for a large family of graph sketching algorithms that encompasses prior work on spanners and many (but importantly not also all) related cut-based problems mentioned above. Our lower bound matches the algorithmic bounds of the recent result of Filtser, Kapralov, and Nouri (SODA'21), up to lower order terms, for constructing spanners via the same graph sketching family. This establishes near-optimality of these bounds, at least restricted to this family of graph sketching techniques, and makes progress on a conjecture posed in this latter work.
翻译:Ahn, Guha, 和 McGregor (SODA'12) 提出的线性测量分析图表结构的强大范例。 该模型在流流、分布式计算和大规模平行算法中已经发现许多应用。 图形图画在连接、 最小横贯树木、 边缘或顶端连接、 切削或光谱放大器等各种问题上证明相当成功。 然而, 图表的近距离路径测量, 并具体计算一个射线仪的问题, 在成功列表中明显遗漏了。 这使得这一基本问题的地位变成了这个领域最长期的开放问题之一。 我们对缺乏成功的一个部分解释是, 证明一个大系列的图形图画算法, 包括了以前在拔刀手上的工作, 以及许多( 但重要不是全部) 相关的切入器问题。 我们较低的界限与Filtser、 Kapralov 和 Nouri (SADADADAR21) 最新结果的算法界限非常相似。 这使得这个小的顺序条件更低, 能够通过这个图形家庭在最接近的图形上建立最窄的直径的直径。