On Closest Pair in Euclidean Metric: Monochromatic is as Hard as Bichromatic
Abstract
Given a set of n points in Rd, the (monochromatic) Closest Pair problem asks to find a pair of distinct points in the set that are closest in the p-metric. Closest Pair is a fundamental problem in Computational Geometry and understanding its fine-grained complexity in the Euclidean metric when d=ω( n) was raised as an open question in recent works (Abboud-Rubinstein-Williams [FOCS'17], Williams [SODA'18], David-Karthik-Laekhanukit [SoCG'18]). In this paper, we show that for every p∈ R 1\0\, under the Strong Exponential Time Hypothesis (SETH), for every >0, the following holds: No algorithm running in time O(n2-) can solve the Closest Pair problem in d=( n)(1) dimensions in the p-metric. There exists δ = δ()>0 and c = c() 1 such that no algorithm running in time O(n1.5-) can approximate Closest Pair problem to a factor of (1+δ) in d c n dimensions in the p-metric. At the heart of all our proofs is the construction of a dense bipartite graph with low contact dimension, i.e., we construct a balanced bipartite graph on n vertices with n2- edges whose vertices can be realized as points in a ( n)(1)-dimensional Euclidean space such that every pair of vertices which have an edge in the graph are at distance exactly 1 and every other pair of vertices are at distance greater than 1. This graph construction is inspired by the construction of locally dense codes introduced by Dumer-Miccancio-Sudan [IEEE Trans. Inf. Theory'03].
Turn this paper into a lesson
ArcXiv compiles a structured reading guide from this paper's metadata: plain-English importance, contributions, prerequisite concepts, which sections to read first, flashcards, and a quiz. Grounded in the abstract, never invented.