Penalty Method
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Penalty methods are a certain class of algorithms for solving
constrained optimization In mathematical optimization, constrained optimization (in some contexts called constraint optimization) is the process of optimizing an objective function with respect to some variables in the presence of constraints on those variables. The obj ...
problems. A penalty method replaces a constrained optimization problem by a series of unconstrained problems whose solutions ideally converge to the solution of the original constrained problem. The unconstrained problems are formed by adding a term, called a penalty function, to the objective function that consists of a ''penalty parameter'' multiplied by a measure of violation of the constraints. The measure of violation is nonzero when the constraints are violated and is zero in the region where constraints are not violated.


Example

Let us say we are solving the following constrained problem: : \min f(\mathbf x) subject to : c_i(\mathbf x) \le 0 ~\forall i \in I. This problem can be solved as a series of unconstrained minimization problems : \min \Phi_k (\mathbf x) = f (\mathbf x) + \sigma_k ~ \sum_ ~ g(c_i(\mathbf x)) where : g(c_i(\mathbf x))=\max(0,c_i(\mathbf x ))^2. In the above equations, g(c_i(\mathbf x)) is the ''exterior penalty function'' while \sigma_k are the ''penalty coefficients''. In each iteration ''k'' of the method, we increase the penalty coefficient \sigma_k (e.g. by a factor of 10), solve the unconstrained problem and use the solution as the initial guess for the next iteration. Solutions of the successive unconstrained problems will asymptotically converge to the solution of the original constrained problem.


Practical application

Image compression Image compression is a type of data compression applied to digital images, to reduce their cost for storage or transmission. Algorithms may take advantage of visual perception and the statistical properties of image data to provide superior r ...
optimization algorithms can make use of penalty functions for selecting how best to compress zones of colour to single representative values.


Barrier methods

Barrier methods constitute an alternative class of algorithms for constrained optimization. These methods also add a penalty-like term to the objective function, but in this case the iterates are forced to remain interior to the feasible domain and the barrier is in place to bias the iterates to remain away from the boundary of the feasible region.


See also

Other nonlinear programming algorithms: * Sequential quadratic programming *
Successive linear programming Successive Linear Programming (SLP), also known as Sequential Linear Programming, is an optimization technique for approximately solving nonlinear optimization problems. Starting at some estimate of the optimal solution, the method is based on sol ...
* Sequential linear-quadratic programming * Interior point method * Augmented Lagrangian method Other links: * Barrier function


References

Smith, Alice E.; Coit David W
Penalty functions
Handbook of Evolutionary Computation, Section C 5.2. Oxford University Press and Institute of Physics Publishing, 1996. Courant, R
Variational methods for the solution of problems of equilibrium and vibrations
Bull. Amer. Math. Soc., 49, 1–23, 1943. Wotao, Y
Optimization Algorithms for constrained optimization
Department of Mathematics, UCLA, 2015. {{optimization algorithms Optimization algorithms and methods