Good approximations have been attained for the sparsest cut problem by rounding solutions to convex relaxations via low-distortion metric embeddings. Recently, Bryant and Tupper showed that this approach extends to the hypergraph setting by formulating a linear program whose solutions are so-called diversities which are rounded via diversity embeddings into $\ell_1$. Diversities are a generalization of metric spaces in which the nonnegative function is defined on all subsets as opposed to only on pairs of elements. We show that this approach yields a polytime $O(\log{n})$-approximation when either the supply or demands are given by a graph. This result improves upon Plotkin et al.'s $O(\log{(kn)}\log{n})$-approximation, where $k$ is the number of demands, for the setting where the supply is given by a graph and the demands are given by a hypergraph. Additionally, we provide a polytime $O(\min{\{r_G,r_H\}}\log{r_H}\log{n})$-approximation for when the supply and demands are given by hypergraphs whose hyperedges are bounded in cardinality by $r_G$ and $r_H$ respectively. To establish these results we provide an $O(\log{n})$-distortion $\ell_1$ embedding for the class of diversities known as diameter diversities. This improves upon Bryant and Tupper's $O(\log\^2{n})$-distortion embedding. The smallest known distortion with which an arbitrary diversity can be embedded into $\ell_1$ is $O(n)$. We show that for any $\epsilon > 0$ and any $p>0$, there is a family of diversities which cannot be embedded into $\ell_1$ in polynomial time with distortion smaller than $O(n^{1-\epsilon})$ based on querying the diversities on sets of cardinality at most $O(\log^p{n})$, unless $P=NP$. This disproves (an algorithmic refinement of) Bryant and Tupper's conjecture that there exists an $O(\sqrt{n})$-distortion $\ell_1$ embedding based off a diversity's induced metric.
翻译:(c) 将非负值功能定义在所有子集中, 而不是仅对元素组合中, 以四舍五入 {Pellial = directive resulations $。 最近, Bryant 和 Tupper 显示, 这种方法通过制定线性程序, 其解决方案被称为多样性嵌入 $\ $ 1 美元。 多样性是一个通用空间, 在所有子集中定义非负值功能, 而不是仅对元素组合下定义。 我们显示, 当通过图表提供 $O( log{n} $ $ 美元) 的多时, 这个方法会产生一个多时段 $ (o) 美元( 美元) 和 美元( h_ 美元) 接近 。 这个结果在 Plotkin 和 al. $( log{n) 上, 美元( 美元) 美元( 美元) 上显示需求数量, 美元(k) 由图表提供, 任何供量和高度提供。</s>