Testing Matrix Rank, Optimally
Abstract
We show that for the problem of testing if a matrix A ∈ Fn × n has rank at most d, or requires changing an ε-fraction of entries to have rank at most d, there is a non-adaptive query algorithm making O(d2/ε) queries. Our algorithm works for any field F. This improves upon the previous O(d2/ε2) bound (SODA'03), and bypasses an (d2/ε2) lower bound of (KDD'14) which holds if the algorithm is required to read a submatrix. Our algorithm is the first such algorithm which does not read a submatrix, and instead reads a carefully selected non-adaptive pattern of entries in rows and columns of A. We complement our algorithm with a matching query complexity lower bound for non-adaptive testers over any field. We also give tight bounds of (d2) queries in the sensing model for which query access comes in the form of Xi, A:=tr(Xi A); perhaps surprisingly these bounds do not depend on ε. We next develop a novel property testing framework for testing numerical properties of a real-valued matrix A more generally, which includes the stable rank, Schatten-p norms, and SVD entropy. Specifically, we propose a bounded entry model, where A is required to have entries bounded by 1 in absolute value. We give upper and lower bounds for a wide range of problems in this model, and discuss connections to the sensing model above.
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.