The Sharp Power Law of Local Search on Expanders
Simina Br\^anzei, Davin Choo, Nicholas Recker

TL;DR
This paper establishes tight bounds on the query complexity of local search on expander graphs, showing it is nearly optimal and introducing a broader framework involving graph features like congestion and separation number.
Contribution
It provides the first tight lower bounds for local search on expanders and extends the analysis framework to include vertex congestion and separation number.
Findings
Query complexity on expanders is (rac{\u221a{n}}{\u2206{n}})
Introduces bounds based on vertex congestion and separation number
Relational adversary method is strengthened for randomized algorithms
Abstract
Local search is a powerful heuristic in optimization and computer science, the complexity of which was studied in the white box and black box models. In the black box model, we are given a graph and oracle access to a function . The local search problem is to find a vertex that is a local minimum, i.e. with for all , using as few queries as possible. The query complexity is well understood on the grid and the hypercube, but much less is known beyond. We show the query complexity of local search on -regular expanders with constant degree is , where is the number of vertices. This matches within a logarithmic factor the upper bound of for constant degree graphs from Aldous (1983), implying that steepest descent with a warm start is an essentially optimal…
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Taxonomy
TopicsOptimization and Search Problems · Complexity and Algorithms in Graphs · Advanced Graph Theory Research
