Nearly Optimal Deterministic Algorithm for Sparse Walsh-Hadamard Transform
Abstract
For every fixed constant α > 0, we design an algorithm for computing the k-sparse Walsh-Hadamard transform of an N-dimensional vector x ∈ RN in time k1+α ( N)O(1). Specifically, the algorithm is given query access to x and computes a k-sparse x ∈ RN satisfying \|x - x\|1 ≤ c \|x - Hk(x)\|1, for an absolute constant c > 0, where x is the transform of x and Hk(x) is its best k-sparse approximation. Our algorithm is fully deterministic and only uses non-adaptive queries to x (i.e., all queries are determined and performed in parallel when the algorithm starts). An important technical tool that we use is a construction of nearly optimal and linear lossless condensers which is a careful instantiation of the GUV condenser (Guruswami, Umans, Vadhan, JACM 2009). Moreover, we design a deterministic and non-adaptive 1/1 compressed sensing scheme based on general lossless condensers that is equipped with a fast reconstruction algorithm running in time k1+α ( N)O(1) (for the GUV-based condenser) and is of independent interest. Our scheme significantly simplifies and improves an earlier expander-based construction due to Berinde, Gilbert, Indyk, Karloff, Strauss (Allerton 2008). Our methods use linear lossless condensers in a black box fashion; therefore, any future improvement on explicit constructions of such condensers would immediately translate to improved parameters in our framework (potentially leading to k ( N)O(1) reconstruction time with a reduced exponent in the poly-logarithmic factor, and eliminating the extra parameter α). Finally, by allowing the algorithm to use randomness, while still using non-adaptive queries, the running time of the algorithm can be improved to O(k 3 N).
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