Recent Progress on Derandomizing Space-Bounded Computation
Is randomness ever necessary for space-efficient computation? It is commonly conjectured that L = BPL, meaning that halting decision algorithms can always be derandomized without increasing their space complexity by more than a constant factor. In the past several years, there has been some exciting progress toward proving this conjecture. Thanks to recent work, we have new pseudorandom generators (PRGs), new black-box derandomization algorithms (generalizations of PRGs), and new non-black-box derandomization algorithms. In this talk, we will survey these recent developments, with an emphasis on Laplacian methods, error reduction procedures, and weighted pseudorandom generators.
Date
Speakers
William Hoza
Affiliation
University of Chicago