Subset-Sum and k-SAT are two of the most extensively studied problems in computer science, and conjectures about their hardness are among the cornerstones of fine-grained complexity. One of the most intriguing open problems in this area is to base the hardness of one of these problems on the other. Our main result is a tight reduction from k-SAT to Subset-Sum on dense instances, proving that Bellman's 1962 pseudo-polynomial $O^{*}(T)$-time algorithm for Subset-Sum on $n$ numbers and target $T$ cannot be improved to time $T^{1-\varepsilon}\cdot 2^{o(n)}$ for any $\varepsilon>0$, unless the Strong Exponential Time Hypothesis (SETH) fails. This is one of the strongest known connections between any two of the core problems of fine-grained complexity. As a corollary, we prove a "Direct-OR" theorem for Subset-Sum under SETH, offering a new tool for proving conditional lower bounds: It is now possible to assume that deciding whether one out of $N$ given instances of Subset-Sum is a YES instance requires time $(N T)^{1-o(1)}$. As an application of this corollary, we prove a tight SETH-based lower bound for the classical Bicriteria s,t-Path problem, which is extensively studied in Operations Research. We separate its complexity from that of Subset-Sum: On graphs with $m$ edges and edge lengths bounded by $L$, we show that the $O(Lm)$ pseudo-polynomial time algorithm by Joksch from 1966 cannot be improved to $\tilde{O}(L+m)$, in contrast to a recent improvement for Subset Sum (Bringmann, SODA 2017).
翻译:Subset-Sum 和 kSAT 是计算机科学中研究最广泛的两个问题, 有关其硬度的推测是精细复杂度的基石之一。 这个领域最令人感兴趣的一个未解决的问题是将其中之一的硬度建立在另一个问题上。 我们的主要结果是, 在密集的事例中从 k-SAT 到 Subset-Sum, 证明 Bellman 1962 的 伪球式 $O ⁇ (T) 时间算法, 以美元计的 Subset- Sum 的 硬度计算法, 其硬度值是无法改进的 $(T) 1\\ varepslon ⁇ cdot 2 ⁇ o(n) 。 最令人感兴趣的一个问题是: 硬度 硬度 时间比值比值比值比值(S_ 美元) 的硬度值比值比值要低, 实际比值比值比值比值比值比值要低。