ROL
ROL_MeanVarianceQuadrangle.hpp
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43 
44 #ifndef ROL_MEANVARIANCEQUAD_HPP
45 #define ROL_MEANVARIANCEQUAD_HPP
46 
47 #include "ROL_ExpectationQuad.hpp"
48 
75 namespace ROL {
76 
77 template<class Real>
79 private:
80  Real coeff_;
81 
82  void parseParameterList(ROL::ParameterList &parlist) {
83  std::string type = parlist.sublist("SOL").get("Type","Risk Averse");
84  ROL::ParameterList list;
85  if (type == "Risk Averse") {
86  list = parlist.sublist("SOL").sublist("Risk Measure").sublist("Safety Margin");
87  }
88  else if (type == "Regret") {
89  list = parlist.sublist("SOL").sublist("Regret Measure").sublist("Mean L2");
90  }
91  else if (type == "Error" || type == "Deviation") {
92  coeff_ = static_cast<Real>(1);
93  return;
94  }
95  coeff_ = list.get<Real>("Coefficient");
96  }
97 
98  void checkInputs(void) const {
99  Real zero(0);
100  ROL_TEST_FOR_EXCEPTION((coeff_ <= zero), std::invalid_argument,
101  ">>> ERROR (ROL::MeanVarianceQuadrangle): Coefficient must be positive!");
102  }
103 
104 public:
109  MeanVarianceQuadrangle(const Real coeff = 1)
110  : ExpectationQuad<Real>(), coeff_(coeff) {
111  checkInputs();
112  }
113 
122  MeanVarianceQuadrangle(ROL::ParameterList &parlist)
123  : ExpectationQuad<Real>() {
124  parseParameterList(parlist);
125  checkInputs();
126  }
127 
128  Real error(Real x, int deriv = 0) {
129  Real err(0), two(2);
130  if (deriv==0) {
131  err = coeff_*x*x;
132  }
133  else if (deriv==1) {
134  err = two*coeff_*x;
135  }
136  else {
137  err = two*coeff_;
138  }
139  return err;
140  }
141 
142  Real regret(Real x, int deriv = 0) {
143  Real zero(0), one(1);
144  Real X = ((deriv==0) ? x : ((deriv==1) ? one : zero));
145  Real reg = error(x,deriv) + X;
146  return reg;
147  }
148 
149 };
150 
151 }
152 #endif
Objective_SerialSimOpt(const Ptr< Obj > &obj, const V &ui) z0_ zero()
Provides a general interface for risk and error measures generated through the expectation risk quadr...
Provides an interface for the mean plus variance risk measure using the expectation risk quadrangle.
Real error(Real x, int deriv=0)
Evaluate the scalar error function at x.
MeanVarianceQuadrangle(ROL::ParameterList &parlist)
Constructor.
Real regret(Real x, int deriv=0)
Evaluate the scalar regret function at x.
MeanVarianceQuadrangle(const Real coeff=1)
Constructor.
void parseParameterList(ROL::ParameterList &parlist)