Luus–Jaakola
In computational engineering, Luus–Jaakola (LJ) denotes a heuristic for global optimization of a real-valued function.[1] In engineering use, LJ is not an algorithm that terminates with an optimal solution; nor is it an iterative method that generates a sequence of points that converges to an optimal solution (when one exists). However, when applied to a twice continuously differentiable function, the LJ heuristic is a proper iterative method, that generates a sequence that has a convergent subsequence; for this class of problems, Newton's method is recommended and enjoys a quadratic rate of convergence, while no convergence rate analysis has been given for the LJ heuristic.[1] In practice, the LJ heuristic has been recommended for functions that need be neither convex nor differentiable nor locally Lipschitz: The LJ heuristic does not use a gradient or subgradient when one be available, which allows its application to non-differentiable and non-convex problems.
Proposed by Luus and Jaakola,[2] LJ generates a sequence of iterates. The next iterate is selected from a sample from a neighborhood of the current position using a uniform distribution. With each iteration, the neighborhood decreases, which forces a subsequence of iterates to converge to a cluster point.[1]
Luus has applied LJ in optimal control,[3] [4] transformer design,[5] metallurgical processes,[6] and chemical engineering.[7]
Motivation
[edit]At each step, the LJ heuristic maintains a box from which it samples points randomly, using a uniform distribution on the box. For a unimodal function, the probability of reducing the objective function decreases as the box approach a minimum. The picture displays a one-dimensional example.
Heuristic
[edit]Let be the fitness or cost function which must be minimized. Let designate a position or candidate solution in the search-space. The LJ heuristic iterates the following steps:
- Initialize x ~ U(blo,bup) with a random uniform position in the search-space, where blo and bup are the lower and upper boundaries, respectively.
- Set the initial sampling range to cover the entire search-space (or a part of it): d = bup − blo
- Until a termination criterion is met (e.g. number of iterations performed, or adequate fitness reached), repeat the following:
- Pick a random vector a ~ U(−d, d)
- Add this to the current position x to create the new potential position y = x + a
- If (f(y) < f(x)) then move to the new position by setting x = y, otherwise decrease the sampling-range: d = 0.95 d
- Now x holds the best-found position.
Variations
[edit]Luus notes that ARS (Adaptive Random Search) algorithms proposed to date differ in regard to many aspects.[8]
- Procedure of generating random trial points.
- Number of internal loops (NIL, the number of random search points in each cycle).
- Number of cycles (NEL, number of external loops).
- Contraction coefficient of the search region size. (Some example values are 0.95 to 0.60.)
- Whether the region reduction rate is the same for all variables or a different rate for each variable (called the M-LJ algorithm).
- Whether the region reduction rate is a constant or follows another distribution (e.g. Gaussian).
- Whether to incorporate a line search.
- Whether to consider constraints of the random points as acceptance criteria, or to incorporate a quadratic penalty.
Convergence
[edit]Nair proved a convergence analysis. For twice continuously differentiable functions, the LJ heuristic generates a sequence of iterates having a convergent subsequence.[1] For this class of problems, Newton's method is the usual optimization method, and it has quadratic convergence (regardless of the dimension of the space, which can be a Banach space, according to Kantorovich's analysis).
The worst-case complexity of minimization on the class of unimodal functions grows exponentially in the dimension of the problem, according to the analysis of Yudin and Nemirovsky, however. The Yudin-Nemirovsky analysis implies that no method can be fast on high-dimensional problems that lack convexity:
"The catastrophic growth [in the number of iterations needed to reach an approximate solution of a given accuracy] as [the number of dimensions increases to infinity] shows that it is meaningless to pose the question of constructing universal methods of solving ... problems of any appreciable dimensionality 'generally'. It is interesting to note that the same [conclusion] holds for ... problems generated by uni-extremal [that is, unimodal] (but not convex) functions."[9]
When applied to twice continuously differentiable problems, the LJ heuristic's rate of convergence decreases as the number of dimensions increases.[10]
See also
[edit]- Random optimization is a related family of optimization methods that sample from general distributions, for example the uniform distribution.
- Random search is a related family of optimization methods that sample from general distributions, for example, a uniform distribution on the unit sphere.
- Pattern search are used on noisy observations, especially in response surface methodology in chemical engineering. They do not require users to program gradients or hessians.
References
[edit]- ^ a b c d Nair, G. Gopalakrishnan (1979). "On the convergence of the LJ search method". Journal of Optimization Theory and Applications. 28 (3): 429–434. doi:10.1007/BF00933384. MR 0543384.
- ^ Luus, R.; Jaakola, T.H.I. (1973). "Optimization by direct search and systematic reduction of the size of search region". AIChE Journal. 19 (4): 760–766. doi:10.1002/aic.690190413.
- ^ Bojkov, R.; Hansel, B.; Luus, R. (1993). "Application of direct search optimization to optimal control problems". Hungarian Journal of Industrial Chemistry. 21: 177–185.
- ^ Heinänen, Eero (October 2018). A Method for automatic tuning of PID controller following Luus-Jaakola optimization (PDF) (Master's Thesis ed.). Tampere, Finland: Tampere University of Technology. Retrieved Feb 1, 2019.
- ^ Spaans, R.; Luus, R. (1992). "Importance of search-domain reduction in random optimization". Journal of Optimization Theory and Applications. 75 (3): 635–638. doi:10.1007/BF00940497. MR 1194836.
- ^ Papangelakis, V.G.; Luus, R. (1993). "Reactor optimization in the pressure oxidization process". Proc. Int. Symp. on Modelling, Simulation and Control of Metallurgical Processes. pp. 159–171.
- ^ Lee, Y.P.; Rangaiah, G.P.; Luus, R. (1999). "Phase and chemical equilibrium calculations by direct search optimization". Computers & Chemical Engineering. 23 (9): 1183–1191. doi:10.1016/s0098-1354(99)00283-5.
- ^ Luus, Rein (2010). "Formulation and Illustration of Luus-Jaakola Optimization Procedure". In Rangalah, Gade Pandu (ed.). Stochastic Global Optimization: Techniques and Applications in Chemical Engineering. World Scientific Pub Co Inc. pp. 17–56. ISBN 978-9814299206.
- ^ Nemirovsky, A. S.; Yudin, D. B. (1983). Problem complexity and method efficiency in optimization. Wiley-Interscience Series in Discrete Mathematics (Translated by E. R. Dawson from the (1979) Russian (Moscow: Nauka) ed.). New York: John Wiley & Sons, Inc. p. 7. ISBN 0-471-10345-4. MR 0702836. Page 7 summarizes the later discussion of Nemirovsky & Yudin (1983, pp. 36–39).
- ^ Nair (1979), p. 433.