Matrix hypercontractivity, streaming algorithms and LDCs: the large alphabet case
Abstract
We prove a hypercontractive inequality for matrix-valued functions defined over large alphabets. In order to do so, we prove a generalization of the powerful 2-uniform convexity inequality for trace norms of Ball, Carlen, Lieb (Inventiones Mathematicae'94). Using our hypercontractive~inequality, we present upper and lower bounds for the communication complexity of the Hidden Hypermatching problem defined over large alphabets. We then consider streaming algorithms for approximating the value of Unique Games on a hypergraph with t-size hyperedges. By using our communication lower bound, we show that every streaming algorithm in the adversarial model achieving an (r-)-approximation of this value requires (n1-2/t) quantum space, where r is the alphabet size. We next present a lower bound for locally decodable codes (LDC) Zrn ZrN over large alphabets with recoverability probability at least 1/r + . Using hypercontractivity, we give an exponential lower bound N = 2(4 n/r4) for 2-query (possibly non-linear) LDCs over Zr and using the non-commutative Khintchine inequality we prove an improved lower bound of N = 2(2 n/r2).
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.