semidef — semidefinite programming
[x,Z,ul,info]=semidef(x0,Z0,F,blck_szs,c,options)
m x 1 real column vector (must be strictly primal feasible, see below)
L x 1 real vector (compressed form of a strictly feasible dual matrix, see below)
L x (m+1) real matrix
p x 2 integer matrix (sizes of the blocks) defining the
dimensions of the (square) diagonal blocks
size(Fi(j)=blck_szs(j) j=1,...,m+1.
m x 1 real vector
row vector with five entries
[nu,abstol,reltol,0,maxiters]
row vector with two entries
[x,Z,ul,info]=semidef(x0,Z0,F,blck_szs,c,options)
solves semidefinite program:

and its dual:

exploiting block structure in the matrices
F_i.
It interfaces L. Vandenberghe and S. Boyd sp.c program.
The Fi's matrices are stored columnwise in
F in compressed format: if F_i^j,
i=0,..,m, j=1,...,L denote the jth (symmetric) diagonal block of
F_i, then

where pack(M), for symmetric
M, is the vector
[M(1,1);M(1,2);...;M(1,n);M(2,2);M(2,3);...;M(2,n);...;M(n,n)]
(obtained by scanning columnwise the lower triangular part of
M).
blck_szs gives the size of block
j, ie,
size(F_i^j)=blck_szs(j).
Z is a block diagonal matrix with L blocks Z^0, ...,
Z^{L-1}. Z^j has size blck_szs[j]
times blck_szs[j]. Every block is stored using packed storage of
the lower triangular part.
The 2 vector ul contains the primal objective
value c'*x and the dual objective value
-trace(F_0*Z).
The entries of options are respectively:
nu = a real parameter which ntrols the rate of
convergence. abstol = absolute tolerance.
reltol = relative tolerance (has a special meaning when
negative). tv target value, only referenced if
reltol < 0. iters = on entry:
maximum number of iterations >= 0, on exit: the number of iterations
taken. Notice that the absolute tolerance cannot be lower than 1.0e-8,
that is, the absolute tolerance used in the algorithm is the maximum of
the user-defined tolerance and the constant tolerance 1.0e-8.
info returns 1 if maxiters exceeded, 2 if
absolute accuracy is reached, 3 if relative accuracy is reached, 4 if
target value is reached, 5 if target value is not achievable; negative
values indicate errors.
Convergence criterion:
(1) maxiters is exceeded
(2) duality gap is less than abstol
(3) primal and dual objective are both positive and
duality gap is less than (reltol * dual objective)
or primal and dual objective are both negative and
duality gap is less than (reltol * minus the primal objective)
(4) reltol is negative and
primal objective is less than tv or dual objective is greater
than tv
F0=[2,1,0,0;
1,2,0,0;
0,0,3,1
0,0,1,3];
F1=[1,2,0,0;
2,1,0,0;
0,0,1,3;
0,0,3,1]
F2=[2,2,0,0;
2,2,0,0;
0,0,3,4;
0,0,4,4];
blck_szs=[2,2];
F01=F0(1:2,1:2);F02=F0(3:4,3:4);
F11=F1(1:2,1:2);F12=F1(3:4,3:4);
F21=F2(1:2,1:2);F22=F2(3:4,3:4);
x0=[0;0]
Z0=2*F0;
Z01=Z0(1:2,1:2);Z02=Z0(3:4,3:4);
FF=[[F01(:);F02(:)],[F11(:);F12(:)],[F21(:);F22(:)]]
ZZ0=[[Z01(:);Z02(:)]];
c=[trace(F1*Z0);trace(F2*Z0)];
options=[10,1.d-10,1.d-10,0,50];
[x,Z,ul,info]=semidef(x0,pack(ZZ0),pack(FF),blck_szs,c,options)
w=vec2list(unpack(Z,blck_szs),[blck_szs;blck_szs]);Z=sysdiag(w(1),w(2))
c'*x+trace(F0*Z)
spec(F0+F1*x(1)+F2*x(2))
trace(F1*Z)-c(1)
trace(F2*Z)-c(2)
L. Vandenberghe and S. Boyd, " Semidefinite Programming," Informations Systems Laboratory, Stanford University, 1994.
Ju. E. Nesterov and M. J. Todd, "Self-Scaled Cones and Interior-Point Methods in Nonlinear Programming," Working Paper, CORE, Catholic University of Louvain, Louvain-la-Neuve, Belgium, April 1994.
SP: Software for Semidefinite Programming, http://www.ee.ucla.edu/~vandenbe/sp.html