Quantitative Group Testing and the rank of random matrices

06/16/2020
by   Uriel Feige, et al.
0

Given a random Bernoulli matrix A∈{0,1}^m× n, an integer 0< k < n and the vector y:=Ax, where x ∈{0,1}^n is of Hamming weight k, the objective in the Quantitative Group Testing (QGT) problem is to recover x. This problem is more difficult the smaller m is. For parameter ranges of interest to us, known polynomial time algorithms require values of m that are much larger than k. In this work, we define a seemingly easier problem that we refer to as Subset Select. Given the same input as in QGT, the objective in Subset Select is to return a subset S ⊆ [n] of cardinality m, such that for all i∈ [n], if x_i = 1 then i∈ S. We show that if the square submatrix of A defined by the columns indexed by S has nearly full rank, then from the solution of the Subset Select problem we can recover in polynomial-time the solution x to the QGT problem. We conjecture that for every polynomial time Subset Select algorithm, the resulting output matrix will satisfy the desired rank condition. We prove the conjecture for some classes of algorithms. Using this reduction, we provide some examples of how to improve known QGT algorithms. Using theoretical analysis and simulations, we demonstrate that the modified algorithms solve the QGT problem for values of m that are smaller than those required for the original algorithms.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
02/10/2022

On the Identity Problem for Unitriangular Matrices of Dimension Four

We show that the Identity Problem is decidable in polynomial time for fi...
research
10/05/2018

Subset selection in sparse matrices

In subset selection we search for the best linear predictor that involve...
research
11/05/2018

Learning Two Layer Rectified Neural Networks in Polynomial Time

Consider the following fundamental learning problem: given input example...
research
10/11/2021

On the computational equivalence of co-NP refutations of a matrix being a P-matrix

A P-matrix is a square matrix X such that all principal submatrices of X...
research
02/27/2018

Breaking the 1/√(n) Barrier: Faster Rates for Permutation-based Models in Polynomial Time

Many applications, including rank aggregation and crowd-labeling, can be...
research
10/30/2019

Optimal Analysis of Subset-Selection Based L_p Low Rank Approximation

We study the low rank approximation problem of any given matrix A over R...
research
11/18/2018

The problematic nature of potentially polynomial-time algorithms solving the subset-sum problem

The main purpose of this paper is to study the NP-complete subset-sum pr...

Please sign up or login with your details

Forgot password? Click here to reset