O(n) Passes is Optimal for Semi-Streaming Maximal Independent Set
Abstract
In the semi-streaming model for processing massive graphs, an algorithm makes multiple passes over the edges of a given n-vertex graph and is tasked with computing the solution to a problem using O(n · polylog(n)) space. Semi-streaming algorithms for Maximal Independent Set (MIS) that run in O(n) passes have been known for almost a decade, however, the best lower bounds can only rule out single-pass algorithms. We close this large gap by proving that the current algorithms are optimal: Any semi-streaming algorithm for finding an MIS with constant probability of success requires (n) passes. This settles the complexity of this fundamental problem in the semi-streaming model, and constitutes one of the first optimal multi-pass lower bounds in this model. We establish our result by proving an optimal round vs communication tradeoff for the (multi-party) communication complexity of MIS. The key ingredient of this result is a new technique, called hierarchical embedding, for performing round elimination: we show how to pack many but small hard (r-1)-round instances of the problem into a single r-round instance, in a way that enforces any r-round protocol to effectively solve all these (r-1)-round instances also. These embeddings are obtained via a novel application of results from extremal graph theory -- in particular dense graphs with many disjoint unique shortest paths -- together with a newly designed graph product, and are analyzed via information-theoretic tools such as direct-sum and message compression arguments.
Turn this paper into a full lesson
ArcXiv compiles a staged curriculum from this paper: 8-12 lessons across beginner → advanced, synthesised section guides, visuals, flashcards, a quiz, exercises, and on-demand deep dives per section. Grounded in the abstract, never invented.