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-
NAME function
- listing the names of arguments
-
NCOL function
- finding the number of columns of a matrix
-
NLENG function
- finding the size of an element
-
nonlinear optimization subroutines
- advanced examples
- conjugate gradient optimization
- control parameters vector "Control Parameters Vector"
- control parameters vector "Control Parameters Vector"
- control parameters vector "Control Parameters Vector"
- details
- double dogleg optimization "NLPDD Call"
- double dogleg optimization "NLPDD Call"
- double dogleg optimization "NLPDD Call"
- feasible point computation
- finite difference approximations "Finite Difference Approximations of Derivatives"
- finite difference approximations "Finite Difference Approximations of Derivatives"
- finite difference approximations "Finite Difference Approximations of Derivatives"
- finite difference approximations "NLPFDD Call"
- finite difference approximations "NLPFDD Call"
- finite difference approximations "NLPFDD Call"
- finite difference approximations "NLPFDD Call"
- global vs. local optima "Global Versus Local Optima"
- global vs. local optima "Global Versus Local Optima"
- hybrid quasi-Newton optimization "NLPHQN Call"
- hybrid quasi-Newton optimization "NLPHQN Call"
- hybrid quasi-Newton optimization "NLPHQN Call"
- introductory examples
- Kuhn-Tucker conditions
- least-squares methods "NLPHQN Call"
- least-squares methods "NLPHQN Call"
- least-squares methods "NLPHQN Call"
- least-squares methods "NLPLM Call"
- least-squares methods "NLPLM Call"
- least-squares methods "NLPLM Call"
- Levenberg-Marquardt optimization "NLPLM Call"
- Levenberg-Marquardt optimization "NLPLM Call"
- Levenberg-Marquardt optimization "NLPLM Call"
- Nelder-Mead simplex optimization "NLPNMS Call"
- Nelder-Mead simplex optimization "NLPNMS Call"
- Nelder-Mead simplex optimization "NLPNMS Call"
- Nelder-Mead simplex optimization "NLPNMS Call"
- Newton-Raphson optimization "NLPNRA Call"
- Newton-Raphson optimization "NLPNRA Call"
- Newton-Raphson optimization "NLPNRA Call"
- Newton-Raphson ridge optimization "NLPNRR Call"
- Newton-Raphson ridge optimization "NLPNRR Call"
- NLPCG Call
- NLPCG call
- NLPDD Call "Example 11.3: Compartmental Analysis"
- NLPDD Call "Example 11.3: Compartmental Analysis"
- NLPDD Call "Example 11.7: A Two-Equation Maximum Likelihood Problem"
- NLPDD Call "NLPDD Call"
- NLPDD Call "NLPDD Call"
- NLPDD call
- NLPFDD Call "Example 11.4: MLEs for Two-Parameter Weibull Distribution"
- NLPFDD Call "NLPFDD Call"
- NLPFDD Call "NLPFDD Call"
- NLPFDD call "NLPFDD Call"
- NLPFDD call "NLPFDD Call"
- NLPFEA call
- NLPHQN Call "NLPHQN Call"
- NLPHQN Call "NLPHQN Call"
- NLPHQN call
- NLPLM Call "Example 11.5: Profile-Likelihood-Based Confidence Intervals"
- NLPLM Call "NLPLM Call"
- NLPLM Call "NLPLM Call"
- NLPLM call
- NLPNMS Call "NLPNMS Call"
- NLPNMS Call "NLPNMS Call"
- NLPNMS call "NLPNMS Call"
- NLPNMS call "NLPNMS Call"
- NLPNRA Call "NLPNRA Call"
- NLPNRA Call "NLPNRA Call"
- NLPNRA call
- NLPNRR Call "Example 11.2: Network Flow and Delay"
- NLPNRR Call "NLPNRR Call"
- NLPNRR call
- NLPQN Call "Example 11.3: Compartmental Analysis"
- NLPQN Call "Example 11.3: Compartmental Analysis"
- NLPQN Call "Example 11.8: Time-Optimal Heat Conduction"
- NLPQN Call "NLPQN Call"
- NLPQN Call "NLPQN Call"
- NLPQN Call "NLPQN Call"
- NLPQN Call "NLPQN Call"
- NLPQN call
- NLPQUA Call "NLPQUA Call"
- NLPQUA Call "NLPQUA Call"
- NLPQUA call
- NLPTR Call "Example 11.1: Chemical Equilibrium"
- NLPTR Call "Example 11.4: MLEs for Two-Parameter Weibull Distribution"
- NLPTR Call "NLPTR Call"
- NLPTR call
- objective function and derivatives "Objective Function and Derivatives"
- objective function and derivatives "Objective Function and Derivatives"
- objective function and derivatives "Objective Function and Derivatives"
- objective function and derivatives "Objective Function and Derivatives"
- objective function and derivatives "Objective Function and Derivatives"
- objective function and derivatives "Objective Function and Derivatives"
- options vector "Options Vector"
- options vector "Options Vector"
- options vector "Options Vector"
- options vector "Options Vector"
- options vector "Options Vector"
- options vector "Options Vector"
- overview
- parameter constraints "Parameter Constraints"
- parameter constraints "Parameter Constraints"
- parameter constraints "Parameter Constraints"
- printing optimization history "Printing the Optimization History"
- printing optimization history "Printing the Optimization History"
- quadratic optimization "NLPQUA Call"
- quadratic optimization "NLPQUA Call"
- quadratic optimization "NLPQUA Call"
- quasi-Newton optimization "NLPQN Call"
- quasi-Newton optimization "NLPQN Call"
- quasi-Newton optimization "NLPQN Call"
- quasi-Newton optimization "NLPQN Call"
- quasi-Newton optimization "NLPQN Call"
- return codes
- syntax
- termination criteria "Termination Criteria"
- termination criteria "Termination Criteria"
- termination criteria "Termination Criteria"
- termination criteria "Termination Criteria"
- termination criteria "Termination Criteria"
- termination criteria "Termination Criteria"
- termination criteria "Termination Criteria"
- trust-region optimization "NLPTR Call"
- trust-region optimization "NLPTR Call"
-
NORMAL function
- generating a pseudo-random normal deviate
-
NROW function
- finding the number of rows of a matrix
-
NUM function
- producing a numeric representation of a character matrix
-
Numerical Analysis Functionality
-
numerical integration
- adaptive Romberg method
- of differential equations "ODE Call"
- of differential equations "ODE Call"
- of differential equations "ODE Call"
- of differential equations "ODE Call"
- of differential equations "ODE Call"
- of differential equations "ODE Call"
- of differential equations "ODE Call"
- specifying subintervals
- two-dimensional integration
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