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Type: Package
Title: Alternating Direction Method of Multipliers to Solve Dense Dubmatrix Problem
Version: 0.1.0
Author: Brendan Ames <bpames@ua.edu>, Polina Bombina <pbombina@crimson.ua.edu>
Maintainer: Polina Bombina <pbombina@crimson.ua.edu>
Description: Solves the problem of identifying the densest submatrix in a given or sampled binary matrix, Bombina et al. (2019) <doi:10.48550/arXiv.1904.03272>.
License: CC0
Depends: R (≥ 3.5.0)
Encoding: UTF-8
LazyData: true
RoxygenNote: 6.1.1
Suggests: knitr, rmarkdown
VignetteBuilder: knitr
Imports: Rdpack, utils, stats
RdMacros: Rdpack
NeedsCompilation: no
Packaged: 2019-10-28 18:58:15 UTC; polinabombina
Repository: CRAN
Date/Publication: 2019-10-31 16:20:02 UTC

densub

Description

Iteratively solves the convex optimization problem using ADMM.

Usage

densub(G, m, n, tau = 0.35, gamma = 6/(sqrt(m * n) * (q - p)),
  opt_tol = 1e-04, maxiter, quiet = TRUE)

Arguments

G

sampled binary matrix

m

number of rows in dense submatrix

n

number of columns in dense submatrix

tau

penalty parameter for equality constraint violation

gamma

l_1 regularization parameter

opt_tol

stopping tolerance in algorithm

maxiter

maximum number of iterations of the algorithm to run

quiet

toggles between displaying intermediate statistics

Details

min |X|_* + gamma* |Y|_1 + 1_Omega_W (W) + 1_Omega_Q (Q) + 1_Omega_Z (Z)

s.t X - Y = 0, X = W, X = Z,

where Omega_W (W), Omega_Q (Q), Omega_Z (Z) are the sets: Omega_W = {W in R^MxN | e^TWe = mn}

Omega_Q = {Q in R^MxN | Projection of Q on not N = 0}

Omega_Z = {Z in R^MxN | Z_ij <= 1 for all (i,j) in M x N}

Omega_Q = {Q in R^MxN | Projection of Q on not N = 0}

Omega_Z = {Z in R^MxN | Z_ij <= 1 for all (i,j) in M x N}

1_S is the indicator function of the set S in R^MxN such that 1_S(X) = 0 if X in S and +infinity otherwise

Value

Rank one matrix with mn nonzero entries, matrix Y that is used to count the number of disagreements between G and X


Soft threshholding operator.

Description

Applies the shrinkage operator for singular value tresholding.

Usage

mat_shrink(K, tau)

Arguments

K

matrix

tau

regularization parameter

Value

Matrix

Examples

mat_shrink(matrix(c(1,0,0,0,1,1,1,1,1), nrow=3, ncol=3, byrow=TRUE),0.35)

Sample matrix

Description

Generates binary (M,N) - matrix sampled from dense (m,n) - submatrix.

Usage

plantedsubmatrix(M, N, m, n, p, q)

Arguments

M

number of rows in sampled matrix

N

number of rows in sampled matrix

m

number of rows in dense submatrix

n

natural number used to calculate number of rows in dense submatrix

p

density outside planted submatrix

q

density inside planted submatrix

Details

Let U* and V* be m and n index sets. For each i in U*, j in V* we let a_ij = 1 with probability q and 0 otherwise. For each remaining ij we set a_ij = 1 with probability p < q and take a_ij = 0 otherwise.

Value

Matrix G sampled from the planted dense (mn)-submatrix model, dense sumbatrix X0, matrix Y0 used to count the number of disagreements between G and X0

Examples

plantedsubmatrix(10,10,1,2,0.25,0.75)

These binaries (installable software) and packages are in development.
They may not be fully stable and should be used with caution. We make no claims about them.