46 std::ostream &outStream) {
48 Real ftol = std::sqrt(ROL_EPSILON<Real>());
53 nobj.
prox(*state_->iterateVec,x,t0_,ftol); state_->nprox++;
54 x.
set(*state_->iterateVec);
57 state_->svalue = sobj.
value(x,ftol); state_->nsval++;
59 state_->nvalue = nobj.
value(x,ftol); state_->nnval++;
60 state_->value = state_->svalue + state_->nvalue;
61 sobj.
gradient(*state_->gradientVec,x,ftol); state_->ngrad++;
62 dg.
set(state_->gradientVec->dual());
63 if (lambda_ <= zero && state_->gnorm !=
zero)
64 lambda_ = std::max(lambdaMin_,std::min(t0_,lambdaMax_));
65 pgstep(*state_->iterateVec, *state_->stepVec, nobj, x, dg, lambda_, ftol);
66 state_->snorm = state_->stepVec->norm();
67 state_->gnorm = state_->snorm / lambda_;
75 std::ostream &outStream ) {
76 const Real half(0.5), one(1), eps(std::sqrt(ROL_EPSILON<Real>()));
79 initialize(x,g,sobj,nobj,*s,*dg,outStream);
80 Real strial(0), ntrial(0), Ftrial(0), Fmin(0), Fmax(0), Qk(0), alpha(1), rhoTmp(1);
81 Real gs(0), ys(0), snorm(state_->snorm), ss(0), tol(std::sqrt(ROL_EPSILON<Real>()));
83 std::deque<Real> Fqueue; Fqueue.push_back(state_->value);
89 if (verbosity_ > 0) writeOutput(outStream,
true);
92 while (status_->check(*state_)) {
96 strial = sobj.
value(*state_->iterateVec,tol);
98 ntrial = nobj.
value(*state_->iterateVec,tol);
99 Ftrial = strial + ntrial;
102 Fmax = *std::max_element(Fqueue.begin(),Fqueue.end());
103 gs = state_->gradientVec->apply(*state_->stepVec);
104 Qk = gs + ntrial - state_->nvalue;
105 if (verbosity_ > 1) {
106 outStream <<
" In TypeP::SpectralGradientAlgorithm Line Search" << std::endl;
107 outStream <<
" Step size: " << alpha << std::endl;
108 outStream <<
" Trial objective value: " << Ftrial << std::endl;
109 outStream <<
" Max stored objective value: " << Fmax << std::endl;
110 outStream <<
" Computed reduction: " << Fmax-Ftrial << std::endl;
111 outStream <<
" Dot product of gradient and step: " << Qk << std::endl;
112 outStream <<
" Sufficient decrease bound: " << -Qk*gamma_ << std::endl;
113 outStream <<
" Number of function evaluations: " << ls_nfval << std::endl;
115 while (Ftrial > Fmax + gamma_*Qk && ls_nfval < maxit_) {
117 rhoTmp = std::min(one,-half*Qk/(strial-state_->svalue-alpha*gs));
119 alpha = ((sigma1_ <= rhoTmp && rhoTmp <= sigma2_) ? rhoTmp : rhodec_)*alpha;
121 state_->iterateVec->set(x);
122 state_->iterateVec->axpy(alpha,*state_->stepVec);
125 strial = sobj.
value(*state_->iterateVec,tol);
127 ntrial = nobj.
value(*state_->iterateVec,tol);
128 Ftrial = strial + ntrial;
130 Qk = alpha * gs + ntrial - state_->nvalue;
131 if (verbosity_ > 1) {
132 outStream <<
" In TypeP::SpectralGradientAlgorithm: Line Search" << std::endl;
133 outStream <<
" Step size: " << alpha << std::endl;
134 outStream <<
" Trial objective value: " << Ftrial << std::endl;
135 outStream <<
" Max stored objective value: " << Fmax << std::endl;
136 outStream <<
" Computed reduction: " << Fmax-Ftrial << std::endl;
137 outStream <<
" Dot product of gradient and step: " << Qk << std::endl;
138 outStream <<
" Sufficient decrease bound: " << -Qk*gamma_ << std::endl;
139 outStream <<
" Number of function evaluations: " << ls_nfval << std::endl;
142 state_->nsval += ls_nfval;
143 state_->nnval += ls_nfval;
144 if (
static_cast<int>(Fqueue.size()) == maxSize_) Fqueue.pop_front();
145 Fqueue.push_back(Ftrial);
149 state_->value = Ftrial;
150 state_->svalue = strial;
151 state_->nvalue = ntrial;
152 state_->searchSize = alpha;
153 state_->snorm = alpha * snorm;
154 state_->stepVec->scale(alpha);
155 x.
set(*state_->iterateVec);
160 if (state_->value <= Fmin) {
161 Fmin = state_->value;
166 y->set(*state_->gradientVec);
168 sobj.
gradient(*state_->gradientVec,x,tol); state_->ngrad++;
169 dg->set(state_->gradientVec->dual());
170 y->plus(*state_->gradientVec);
171 ys = y->apply(*state_->stepVec);
172 ss = state_->snorm * state_->snorm;
173 lambda_ = (ys<=eps*state_->snorm ? lambdaMax_ : std::max(lambdaMin_,std::min(ss/ys,lambdaMax_)));
176 pgstep(*state_->iterateVec, *state_->stepVec, nobj, x, *dg, lambda_, tol);
177 snorm = state_->stepVec->norm();
178 state_->gnorm = snorm / lambda_;
181 if (verbosity_ > 0) writeOutput(outStream,writeHeader_);
184 state_->value = Fmin;
190 std::ios_base::fmtflags osFlags(os.flags());
191 if (verbosity_ > 1) {
192 os << std::string(109,
'-') << std::endl;
193 os <<
"Spectral proximal gradient with nonmonotone line search";
194 os <<
" status output definitions" << std::endl << std::endl;
195 os <<
" iter - Number of iterates (steps taken)" << std::endl;
196 os <<
" value - Objective function value" << std::endl;
197 os <<
" gnorm - Norm of the proximal gradient with parameter lambda" << std::endl;
198 os <<
" snorm - Norm of the step (update to optimization vector)" << std::endl;
199 os <<
" alpha - Line search step length" << std::endl;
200 os <<
" lambda - Spectral step length" << std::endl;
201 os <<
" #sval - Cumulative number of times the smooth objective function was evaluated" << std::endl;
202 os <<
" #nval - Cumulative number of times the nonsmooth objective function was evaluated" << std::endl;
203 os <<
" #grad - Cumulative number of times the gradient was computed" << std::endl;
204 os <<
" #prox - Cumulative number of times the proximal operator was computed" << std::endl;
205 os << std::string(109,
'-') << std::endl;
209 os << std::setw(6) << std::left <<
"iter";
210 os << std::setw(15) << std::left <<
"value";
211 os << std::setw(15) << std::left <<
"gnorm";
212 os << std::setw(15) << std::left <<
"snorm";
213 os << std::setw(15) << std::left <<
"alpha";
214 os << std::setw(15) << std::left <<
"lambda";
215 os << std::setw(10) << std::left <<
"#sval";
216 os << std::setw(10) << std::left <<
"#nval";
217 os << std::setw(10) << std::left <<
"#grad";
218 os << std::setw(10) << std::left <<
"#nprox";
232 std::ios_base::fmtflags osFlags(os.flags());
233 os << std::scientific << std::setprecision(6);
234 if ( state_->iter == 0 ) writeName(os);
235 if ( write_header ) writeHeader(os);
236 if ( state_->iter == 0 ) {
238 os << std::setw(6) << std::left << state_->iter;
239 os << std::setw(15) << std::left << state_->value;
240 os << std::setw(15) << std::left << state_->gnorm;
241 os << std::setw(15) << std::left <<
"---";
242 os << std::setw(15) << std::left <<
"---";
243 os << std::setw(15) << std::left << lambda_;
244 os << std::setw(10) << std::left << state_->nsval;
245 os << std::setw(10) << std::left << state_->nnval;
246 os << std::setw(10) << std::left << state_->ngrad;
247 os << std::setw(10) << std::left << state_->nprox;
252 os << std::setw(6) << std::left << state_->iter;
253 os << std::setw(15) << std::left << state_->value;
254 os << std::setw(15) << std::left << state_->gnorm;
255 os << std::setw(15) << std::left << state_->snorm;
256 os << std::setw(15) << std::left << state_->searchSize;
257 os << std::setw(15) << std::left << lambda_;
258 os << std::setw(10) << std::left << state_->nsval;
259 os << std::setw(10) << std::left << state_->nnval;
260 os << std::setw(10) << std::left << state_->ngrad;
261 os << std::setw(10) << std::left << state_->nprox;