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User:Eigen Axon/Books/Introduction to Optimization

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Introduction to Optimization[edit]

Theory and Techniques[edit]

Mathematical optimization
Optimization problem
Global optimization
Travelling salesman problem
Maxima and minima
Loss function
Arg max
Linear programming
Simplex algorithm
Duality (optimization)
Multi-objective optimization
Satisfiability
Extreme value theorem
Karush–Kuhn–Tucker conditions
Iterative method
Convex set
Variational inequality
Convex optimization
Integer programming
Quadratic programming
Fractional programming
Nonlinear programming
Stochastic programming
Robust optimization
Combinatorial optimization
Stochastic optimization
Infinite-dimensional optimization
Heuristic (computer science)
Constraint satisfaction
Constraint programming
Calculus of variations
Optimal control
Dynamic programming
Evolutionary algorithm
Envelope theorem
Maximum theorem
Hessian matrix
Newton's method
Quasi-Newton method
Finite difference
Approximation theory
Numerical analysis
Newton's method in optimization
Sequential quadratic programming
Conjugate gradient method
Interior point method
Gradient descent
Subgradient method
Ellipsoid method
Frank–Wolfe algorithm
Simultaneous perturbation stochastic approximation
Interpolation
Nelder–Mead method
Linear interpolation
Polynomial interpolation
Chebyshev polynomials
Spline interpolation
Spline (mathematics)
Gaussian process
Whittaker–Shannon interpolation formula
Multivariate interpolation
Curve fitting
Bilinear interpolation
Pattern search (optimization)
Golden section search
Luus–Jaakola
Random search
Random optimization
Memetic algorithm
Differential evolution
Dynamic relaxation
Genetic algorithm
Hill climbing
Swarm intelligence
Particle swarm optimization
Multi-swarm optimization
Artificial bee colony algorithm
Ant colony optimization algorithms
Simulated annealing
Tabu search
Multidisciplinary design optimization
Least squares
Non-linear least squares
Best, worst and average case
Computational phylogenetics
Protein structure prediction
Cutting-plane method
Branch and bound
Interval arithmetic
Set inversion
Real algebraic geometry
Monte Carlo method
Stochastic tunneling
Markov chain Monte Carlo
Parallel tempering
Metaheuristic
Evolution strategy
Graduated optimization
Kepler conjecture
Thompson sampling
Molecular modelling
Process optimization
Engineering optimization
LIONsolver
List of optimization software
Mathematical Optimization Society