CGO arbfMIP: Difference between revisions

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==Description of Inputs==
==Description of Inputs==


Problem description structure. The following fields are used:
===Problem structure===
 
The following fields are used in the problem description structure '''Prob''':


{|class="wikitable"
{|class="wikitable"
!Input||Description
!Input||Description
|-valign="middle"
|''Name''||rowspan="16"|See [[Common input for all CGO solvers]]
|-valign="top"
|-valign="top"
|''Name''||Name of the problem. Used for security when doing warm starts.
|''FUNCS.f''
|-valign="top"
|-valign="top"
|''FUNCS.f''||Name of function to compute the objective function.
|''FUNCS.c''
|-valign="top"
|-valign="top"
|''FUNCS.c''||Name of function to compute the nonlinear constraint vector.
|''x_L''
|-valign="top"
|-valign="top"
|''x_L''||Lower bounds on the variables. Must be finite.
|''x_U''
|-valign="top"
|-valign="top"
|''x_U''||Upper bounds on the variables. Must be finite.
|''b_L''
|-valign="top"
|-valign="top"
|''b_U''||Upper bounds for the linear constraints.
|''b_U''
|-valign="top"
|-valign="top"
|''b_L''||Lower bounds for the linear constraints.
|''A''
|-valign="top"
|-valign="top"
|''A''||Linear constraint matrix.
|''c_L''
|-valign="top"
|-valign="top"
|''c_L''||Lower bounds for the nonlinear constraints.
|''c_U''
|-valign="top"
|-valign="top"
|''c_U''||Upper bounds for the nonlinear constraints.
|''WarmStart''
|-valign="top"
|-valign="top"
|''WarmStart''||Set true (non-zero) to load data from previous run from ''cgoSave.mat ''and re- sume optimization from where the last run ended. If ''Prob.CGO.WarmStartInfo ''has been defined through a call to ''WarmDefGLOBAL'', this field is used instead of the ''cgoSave.mat ''file. All CGO solvers  uses the same mat-file and structure field and can read the output of one another.
|''MaxCPU''
|-valign="top"
|-valign="top"
|''MaxCPU''||Maximal CPU Time (in seconds) to be used.
|''user''
|-valign="top"
|-valign="top"
|''user''||User field used to send information to low-level functions.
|''PriLevOpt''
|-valign="top"
|-valign="top"
|''PriLevOpt''||Print Level. 0 = silent. 1 = Summary 2 = Printing  each iteration.  3 = Info about local / global solution. 4 = Progress in x.
|''f_Low''
|-valign="top"
|-valign="top"
|''PriLevSub''||Print Level in subproblem solvers, see help in ''snSolve ''and ''gnSolve''.
|''optParam''
|-valign="top"
|-valign="top"
|''f_Low''||Lower bound on the optimal function value.  If defined, used to restrict the target values into interval \[f Low,min(surface)\].
|''CGO''||See the table below but also [[common input for all CGO solvers#CGO structure|this table]] for input common to all CGO solvers
|-valign="top"
|-valign="top"
|''optParam''||Structure with optimization parameters. The following fields are used:
|''GO''||See [[common input for all CGO solvers#GO structure|common input for all CGO solvers]]
|-valign="top"
|-valign="top"
|''MaxFunc''||Maximal number of costly function evaluations, default 300 for ''rbfSolve ''and ''arbfMIP'', and default 200 for ''ego''. ''MaxFunc ''must be ''<= ''5000. If WarmStart = 1 and MaxFunc ''<= ''nFunc (Number of f(x) used) then set MaxFunc := MaxFunc + nFunc.
|''MIP''||See [[common input for all CGO solvers#MIP structure|common input for all CGO solvers]]
|-valign="top"
|-valign="top"
|''IterPrint''||Print one information line each iteration, and the new x tried. Default IterPrint = 1.  fMinI  means the best f(x) is infeasible. fMinF  means the best f(x) is feasible (also integer feasible).
|''varargin''||Additional parameters to arbfmip are sent to the costly f(x)
|-valign="top"
|}
|''fGoal''||Goal for function value, not used if ''inf ''or empty.
|-valign="top"
|''eps_f''||Relative accuracy for function value, ''fTol ''== ''eps_f ''.  Stop if ''<nowiki>|</nowiki>f - fGoal<nowiki>|</nowiki> ='' ''<nowiki>|</nowiki>f_Goal<nowiki>|</nowiki> * fTol '', if ''fGoal ''= 0. Stop if ''<nowiki>|</nowiki>f - fGoal<nowiki>|</nowiki> = fTol '', if ''fGoal ''= 0. See the output field maxTri.
|-valign="top"
|''bTol''||Linear constraint tolerance.
|-valign="top"
|''cTol''||Nonlinear constraint tolerance.
|-valign="top"
|''MaxIter''||Maximal  number of  iterations  used in  the  local optimization  on the  re- sponse surface in each step. Default 1000, except for pure IP problems, then max(GO.MaxFunc, MaxIter);.
|-valign="top"
|''CGO''||Structure (''Prob.CGO'') with parameters concerning global optimization options.
 
The following general fields in Prob.CGO are used:
|-valign="top"
|''Percent''||Type of strategy to get the initial  sampled values:


{|class="wikitable"
{|class="wikitable"
|Percent||Experimental Design||ExD
|-valign="top"
|||'''Corner  strategies'''||
|-valign="top"
|900||All Corners||1
|-valign="top"
|997||''xL ''+ ''xU  ''+ adjacent corners||2
|-valign="top"
|998||''xU  ''+ adjacent corners||3
|-valign="top"
|999||''xL ''+ adjacent corners||4
|-valign="top"
|||'''Deterministic Strategies'''||
|-valign="top"
|0||User given initial  points||5
|-valign="top"
|94||DIRECT  solver ''glbFast''||6
|-valign="top"
|-valign="top"
|95||DIRECT solver ''glcFast''||6
|colspan="2"|'''- Special ARBF  algorithm parameters in Prob.CGO -'''
|-valign="top"
|-valign="top"
|96||DIRECT  solver ''glbSolve''||6
|''rbfType''||Selects type of radial basis function
|-valign="top"
|97||DIRECT  solver ''glcSolve''||6
|-valign="top"
|98||DIRECT  solver ''glbDirect''||6
|-valign="top"
|99||DIRECT  solver ''glcDirect''||6
|-valign="top"
|||'''Latin  Based Sampling'''||
|-valign="top"
|1||Maximin LHD 1-norm||7
|-valign="top"
|2||Maximin LHD 2-norm||8
|-valign="top"
|3||Maximin LHD Inf-norm||9
|-valign="top"
|4||Minimal Audze-Eglais||10
|-valign="top"
|5||Minimax LHD (only 2 dim)||11
|-valign="top"
|6||Latin Hypercube||12
|-valign="top"
|7||Orthogonal Samling||13
|-valign="top"
|||'''Random  Strategies (pp in %)'''||
|-valign="top"
|1pp||Circle surrounding||14
|-valign="top"
|2pp||Ellipsoid surrounding||15
|-valign="top"
|3pp||Rectangle surrounding||16
|-valign="top"
|}
 
Negative values of Percent result in constrained versions of the experimental design methods 7-16. It means that all points sampled are feasible with respect to all given constraints.
 
For ExD 5,6-12,14-16 user defined points are used.
|-valign="top"
|''nSample''||Number of sample points to be used in initial experimental design. ''nSample ''is used differently dependent on the value of Percent:


{|class="wikitable"
{|class="wikitable"
!||(n)Sample:
!Value||Type
|-valign="top"
|-
!ExD||''< ''0||= 0||''> ''0||[]
|1||Thin Plate Spline
|-valign="top"
|-
|1||2<sup>''d''</sup>
|2||Cubic Spline (default)
|-valign="top"
|-
|6||<nowiki>|</nowiki>n<nowiki>|</nowiki>
|3||Multiquadric
|-valign="top"
|-
|7-11||''d''+ 1||''d'' + 1||max (''d ''+ 1'', n'')||(''d ''+ 1)(''d ''+ 2)''/''2
|4||Inverse multiquadric
|-valign="top"
|-
|12||LATIN(k)
|5||Gaussian
|-valign="top"
|-
|13||<nowiki>|</nowiki>n<nowiki>|</nowiki>
|6||Linear.
|-valign="top"
|14-16||''d'' + 1
|}
|}


where LATIN = [21 21 33 41 51 65 65] and ''k ''= ''<nowiki>|</nowiki>nSample<nowiki>|</nowiki>''. Otherwise nSample as input does not matter.
'''Description  of the experimental  designs:'''
'''ExD  1, '''All  Corners. Initial  points is the corner points of the box given by Prob.x L and Prob.x U. Generates 2''d ''points, which results in too many points when the dimension is high.
'''ExD  2, '''Lower and Upper Corner point + adjacent points. Initial  points are
2 ''* d ''+ 2 corners: the lower left corner ''xL  ''and its ''d ''adjacent  corners ''xL ''+ (''xU ''(''i'') ''- xL ''(''i'')) ''* ei , i ''= 1'', ..., d ''and the upper right corner ''xU  ''and its ''d ''adjacent corners ''xU  - ''(''xU ''(''i'') ''- xL ''(''i'')) ''* ei , i ''= 1'', ..., d''
'''ExD  3. '''Initial  points are the upper right corner ''xU  ''and its ''d ''adjacent corners ''xU  - ''(''xU ''(''i'') ''- xL ''(''i'')) ''* ei , i ''= 1'', ..., d''
'''ExD  4.  '''Initial  points are the lower left corner ''xL ''and its ''d ''adjacent corners ''xL ''+ (''xU ''(''i'') ''- xL ''(''i'')) ''* ei , i ''= 1'', ..., d''
'''ExD  5.  '''User given initial  points, given as a matrix in CGO.X. Each column is one sampled point. If ''d ''= length(Prob.x L), then size(X,1) = d, size(X,2) ''='' ''d ''+ 1. CGO.F should be defined as empty, or contain a vector of corresponding ''f ''(''x'') values. Any CGO.F value set as NaN will be computed by solver routine.
'''ExD 6. '''Use determinstic global optimization methods to find the initial design. Current methods available (all DIRECT  methods), dependent on the value of Percent:
99 = glcDirect, 98 = glbDirect, 97 = glcSolve, 96 = glbSolve, 95 = glcFast, 94 = glbFast.
'''ExD  7-11.  '''Optimal Latin Hypercube Designs (LHD) with respect to different norms. The following norms and designs are available, dependent on the value of Percent:
1 = Maximin  1-Norm, 2 = Maximin  2-Norm, 3 = Maximin  Inf-Norm,  4 = Audze-Eglais Norm, 5 = Minimax 2-Norm.
All designs taken from: [http://www.spacefillingdesigns.nl/ http://www.spacefillingdesigns.nl/]
Constrained  versions will  try  bigger  and  bigger  designs up  to  ''M    ''= max(10 ''* d, nT rial'') different designs, stopping when it has found nSample feasible points.
'''ExD  12.    '''Latin  hypercube  space-filling design.  For  nSample ''< ''0, ''k  ''= ''<nowiki>|</nowiki>nSample<nowiki>|</nowiki> ''should in principle be the problem dimension. The number of points
sampled is:
k : 2 3 4 5 6 ''> ''6
Points : 21 33 41 51 65 65
The call made is: X = daceInit(abs(nSample),Prob.x L,Prob.x U); Set nSample = [ ] to get (d+1)*(d+2)/2 sampled points:
d : 1 2 3 4 5 6 7 8 9 10
Points : 3 6 10 15 21 28 36 45 55 66
This is a more efficient number of points to use.
If CGO.X is nonempty, these points are verified as in ExD 5, and treated as already sampled points. Then nSample additional points are sampled, restricted to be close to the given points.
Constrained version of  Latin  hypercube  only  keep  points  that  fulfill  the linear  and  nonlinear  constraints.    The  algorithm  will  try  up  to  ''M  ''= ''max''(10 ''* d, nTrial'') points, stopping when it has found nSample feasible points (''d ''+ 1 points if ''nSample < ''0).
'''ExD  13. '''Orthogonal Sampling, LH with subspace density demands.
'''ExD  14-16'''. Random strategies, the ''<nowiki>|</nowiki>Percent<nowiki>|</nowiki> ''value gives the percentage size of an ellipsoid, circle or rectangle around the so far sampled points that new points are not allowed in. Range 1%-50%. Recommended values 10% - 20%.
If CGO.X is nonempty, these points are verified as in ExD 5, and treated as already sampled points. Then nSample additional points are sampled, restricted to be close to the given points.
|-valign="top"
|-valign="top"
|''X,F,CX''||The fields X,F,CX are used to define user given points. ExD = 5 (Percent = 0) needs this information. If ExD == 6-12,14-16 these points are included into the design.
|''infStep''||If =1, add search step with target value ''-inf'' first in cycle.<br>Default 0
|-valign="top"
|''X''||A matrix  of initial  x values. One column for every x value.  If ExD == 5, size(X,2) ''>= ''dim(x)+1  needed.
|-valign="top"
|''F''||A vector of initial ''f ''(''x'') values. If any element is set to NaN it will be computed.
|-valign="top"
|''CX''||Optionally  a matrix  of nonlinear constraint  c(x) values.   If  nonempty, then size(CX,2) == size(X,2).  If  any element  is set as NaN, the vector c(x) = CX(:,i)  will be recomputed.
|-valign="top"
|''RandState''||If ''>= ''0, ''rand''(''<nowiki>'</nowiki>state<nowiki>'</nowiki>, RandState'') is set to initialize the pseudo-random generator.  If ''< ''0, ''rand''(''<nowiki>'</nowiki>state<nowiki>'</nowiki>, ''100 ''* clock'') is set to give a new set of random values each run. If isnan(RandState), the random state is not initialized.  RandState will influence if a stochastic initial experimental design is applied, see input Percent and nSample. RandState will also influence if using the ''multiMin'' solver, but the random state seed is not reset in ''multiMin''.  The state of the random generator is saved in the warm start output rngState, and the random generator is reinitialized with this state if warm start is used. Default RandState = 0.
|-valign="top"
|''AddMP''||If = 1, add the midpoint as extra point in the corner strategies. Default 1 for any corner strategy, i.e. Percent is 900, 997, 998 or 999.
|-valign="top"
|''nTrial''||For experimental design CLH, the method generates ''M ''= ''max''(10 ''* d, nTrial'') trial  points, and evaluate them until ''nSample ''feasible points  are found.  In the random designs, ''nTrial  ''is the maximum number of trial  points randomly generated for each new point to sample.
|-valign="top"
|''CLHMethod''||Different search strategies for finding feasible LH points. First of all, the least infeasible point  is added.  Then the linear feasible points are considered. If more points are needed still, the nonlinear infeasible points are added.
 
1 - Take the sampled infeasible points in order.
 
2 - Take a random sample of the infeasible points.


3 - Use points with lowest constraint error (cErr).
|-valign="top"
|-valign="top"
|''SCALE''||0 - Original search space (default if any integer values).
|''TargetMin''||Which minimum of several to pick in  target value problem:


1 - Transform search space to unit cube (default if no integers).
{|class="wikitable"
|-valign="top"
!Value||Minimum picked
|''REPLACE''||0 - No replacement, default for constrained problems.
|-
|0||Use global minimum.
|-
|1||Use best interior local minima, if none use global minimum.
|-
|2||Use best interior local minima, if none use RBF interior minimum.
|-
|3||Use best minimum with lowest number of coefficients on bounds.
|}
Default is ''TargetMin'' = 3.


1 - Large function values are replaced by the median.
''> ''1 - Large values Z are replaced by new values. The replacement is defined as ''Z '':= ''F M AX ''+ ''log''10(''Z - F M AX ''+ 1), where ''FMAX  ''= 10<sup>''REPLACE''</sup>, if ''min''(''F '') ''< ''0 and ''FMAX  ''= 10<sup>(''ceil''(''log''10(''min''(''F '')))+''REPLACE'')</sup>, if ''min''(''F '') ''>= ''0. A new replacement is computed in every iteration, because ''min''(''F '') may change. Default REPLACE = 5, if no linear or nonlinear constraints.
|-valign="top"
|-valign="top"
|''LOCAL''||0 - No local searches after global search. If RBF surface is inaccurate, might be an advantage.
|''fStarRule''||Global-Local search strategy. N = cycle length.<br>Define ''min_sn'' as the global minimum on surface.


1 - Local search from best points after global search. If equal best function values, up to 20 local searches are done.
{|class="wikitable"
|-valign="top"
!Value||fStar target value
|''SMOOTH''||1 - The problem is smooth enough for local search using numerical gradient estimation methods (default).
|-
 
|1||''min_sn - ''((''N - ''(''n - nInit''))''/N '')<sup>2</sup>'' * ''Delta<sub>n</sub>'' (Default)
0 - The problem is nonsmooth or noisy, and local search methods using numer- ical gradient estimation are likely to produce garbage search directions.
|-
|-valign="top"
|2||''min_sn'' - (''N'' - (''n'' - ''nInit''))/''N'' * ''Delta<sub>n</sub>''.  
|''globalSolver''||Global optimization  solver used for subproblem optimization. Default ''glcCluster'' (SMOOTH=1) or 
|-
''glcDirect  ''(SMOOTH=0). If the global Solver is ''glcCluster'', the fields ''Prob.GO.maxFunc1'', ''Prob.GO.maxFunc2'', ''Prob.GO.maxFunc3'', ''Prob.GO.localSolver'', ''Prob.GO.DIRECT ''and other fields set in ''Prob.GO ''are used. See the help for these parameters in ''glcCluster''.
|colspan="2"|Strategy 1 and 2 depends on ''Delta<sub>n</sub>'' estimate (see ''DeltaRule'').
|-valign="top"
|-
|''localSolver''||Local optimization solver used for subproblem optimization. If not defined, the TOMLAB  default constrained NLP solver is used.
|3||-inf-step, ''min_sn''-''k'' *0.1*<nowiki>|</nowiki>min_sn<nowiki>|</nowiki> k = N,...,0.
 
|-
'''- Special RBF  algorithm  parameters in Prob.CGO -'''
|colspan="2"|If ''infStep'' true, addition of -inf-step first in cycle.
|-valign="top"
|}
|''rbfType''||Type of radial basis function: 1 - thin plate spline; 2 - Cubic Spline (default); 3 - Multiquadric; 4 - Inverse multiquadric; 5 - Gaussian; 6 - Linear.
|-valign="top"
|''idea''||Global search type, always idea = 1, i.e. use fnStar values. if ''fStarRule ''=3, then N=1 default, otherwise N=4 default. By default ''idea ''=1, ''fStarRule ''=1, i.e. ''N ''=4.  To change ''N'', see below.
|-valign="top"
|''N''||Cycle length in idea 1 (default N=1 for fStarRule 3, otherwise default N=4) or idea 2 (always N=3).
|-valign="top"
|''infStep''||If =1, add search step with target value ''-8 ''first in cycle. Default 0. Always
 
=1 for the case ''idea ''=1, ''fStarRule ''=3.
|-valign="top"
|''fStarRule''||Global-Local search strategy in idea 1, where N is the cycle  length.  Define ''minsn  ''as the global minimum on the RBF surface. The following strategies for setting the target value ''fStar ''is defined:  1: ''fStar ''= ''min<sub>sn</sub> - ''((''N - ''(''n - nInit''))''/N '')<sup>2</sup> ''* ''&Delta;''n ''(Default), 2: ''fStar ''= ''min<sub>sn</sub> - ''(''N - ''(''n - nInit''))''/N * ''&Delta;''n ''.  


Strategy 1 and 2 depends on &Delta; ''<sub>n</sub> ''estimate  (see DeltaRule). If ''infStep ''=1, add <math>-\infty</math>-step first in cycle. 3: fStar = <math>-\infty</math>-step, ''min<sub>sn</sub>-k *''0''.''1''*<nowiki>|</nowiki>min<sub>sn</sub><nowiki>|</nowiki>k ''= ''N, ..., ''0.
Strategy names in Gutmanns thesis: III, II, I


These strategies had the following names in Gutmanns thesis: III, II, I.
|-valign="top"
|''DeltaRule''||1 = Skip large f(x) when computing f(x) interval &delta;.  0 = Use all points. Default 1.
|-valign="top"
|''eps_sn''||Relative tolerance used to test if the minimum of the RBF surface, ''minsn '', is sufficiently lower than the best point (''fM in '') found (default is 10''-''7 ).
|-valign="top"
|''MaxCycle''||Max number of cycles without progress before stopping, default 10.
|-valign="top"
|''GO''||Structure ''Prob.GO ''(Default values are set for all fields).
|-valign="top"
|-valign="top"
|''MaxFunc''||Maximal number of function evaluations in each global search.
|''DeltaRule''||1 = Skip large f(x) when computing f(x) interval ''Delta''.<br>0 = Use all points.<br>If ''objType'' > 0, default ''DeltaRule'' = 0, otherwise default is 1.
|-valign="top"
|''MaxIter''||Maximal number of iterations in each global search.
|-valign="top"
|''DIRECT''||DIRECT  solver used in glcCluster, either glcSolve or glcDirect(default).
|-valign="top"
|''maxFunc1''||glcCluster parameter, maximum number of function evaluations in the first call. Only used if globalSolver is glcCluster, see help globalSolver.
|-valign="top"
|''maxFunc2''||glcCluster parameter, maximum number of function evaluations in the second call. Only used if globalSolver is glcCluster, see help globalSolver.
|-valign="top"
|''maxFunc3''||glcCluster parameter, maximum sum of function evaluations in repeated first calls to DIRECT routine when trying to get feasible. Only used if globalSolver is glcCluster, see help ''globalSolver''. ''localSolver ''The local solver used by glcCluster. If not defined, then ''Prob.CGO.localSolver'' is used ''MIP ''Structure in Prob, Prob.MIP.


Defines integer optimization parameters. Fields used:
|-valign="top"
|-valign="top"
|''IntVars''||If empty, all variables are assumed non-integer.
|''eps_sn''||Relative tolerance used to test if the minimum of surface, ''min_sn'', is sufficiently lower than the best point (''fMin'') found. Default is ''eps_sn'' = 10<sup>-7</sup>.


If islogical(IntVars)  (=all  elements  are 0/1),  then 1 = integer variable, 0 = continuous variable.  If  any element  ''> ''1, IntVars  is the indices for integer variables.
|-valign="top"
|''varargin''||Other parameters directly sent to low level routines.
|}
|}


==Description  of Outputs==
==Description  of Outputs==


Structure with result from optimization. The following fields are changed:
 
===Result structure===
The output structure ''Result'' contains results from the optimization.<br>The following fields are set:


{|class="wikitable"
{|class="wikitable"
!Output||Description
!Field||Description
|-valign="middle"
|''x_k''||rowspan="5"|See [[Common output for all CGO solvers|Common output for all CGO solvers]] for details.
|-valign="top"
|-valign="top"
|''x_k''||Matrix  with the best points as columns.
|''f_k''
|-valign="top"
|-valign="top"
|''f_k''||The best function value found so far.
|''Iter''
|-valign="top"
|-valign="top"
|''Iter''||Number of iterations.
|''FuncEv''
|-valign="top"
|-valign="top"
|''FuncEv''||Number of function evaluations.
|''ExitText''
|-valign="top"
|-valign="top"
|''ExitText''||Text string with information about the run.
|''ExitFlag''||Always 0
|-valign="top"
|-valign="top"
|''ExitFlag''||Always 0.
|''Inform''||Information parameter.
|-valign="top"
|''CGO''||Subfield ''WarmStartInfo  ''saves warm start information, the same information as in cgoSave.mat,  see below.
|-valign="top"
|''Inform ''||Information parameter.


0 = Normal termination.
{|class="wikitable"
!Value||Signification
|-
|0||Normal termination.
|-
|1||Function value f(x) is less than fGoal.
|-
|2||Error in function value ''f ''(''x'')'', <nowiki>|</nowiki>f - fGoal<nowiki>|</nowiki> <= fTol, fGoal ''= 0''.''
|-
|3||Relative Error in function value ''f ''(''x'') is less than fTol, i.e. <nowiki>|</nowiki>f - fGoal<nowiki>|</nowiki>/<nowiki>|</nowiki>fGoal<nowiki>|</nowiki> <= fTol.


1 = Function value f(x) is less than fGoal.
<!-- Removed for now
|-
|4||No new point sampled for MaxCycle iteration steps.
|-
|5||All sample points same as the best point for MaxCycle last iterations.
|-
|8||No progress for ''MaxCycle * ''(''N ''+ 1) + 1 function evaluations (''> MaxCycle'' cycles, input CGO.MaxCycle).
-->
|-
|6||All sample points same as previous point for the last 11 iterations.
|-
|7||All feasible integers tried.
|-
|9||Max CPU Time reached.
|}


2 = Error in function value ''f ''(''x'')'',  <nowiki>|</nowiki>f - f Goal<nowiki>|</nowiki> = fTol, fGoal ''= 0''.''
|-valign="top"
|''CGO''||Subfield ''WarmStartInfo'' saves warm start information, the same information as in cgoSave.matsee [[Common output for all CGO solvers#WSInfo]].
|}


3 = Relative Error in function value ''f ''(''x'') is less than  fTol, i.e. ''<nowiki>|</nowiki>f  -'' ''f Goal<nowiki>|</nowiki>/<nowiki>|</nowiki>f Goal<nowiki>|</nowiki> = fTol''.
===Output printing===


4 = No new point sampled for MaxCycle iteration steps.
{|class="wikitable"
!colspan="2"|PRINTING in MATLAB window in Iteration 0 after Experimental Design
|- style="text-align:center;"
|colspan="2"|'''If IterPrint >= 1 or PriLev > 1'''
|-
|colspan="2"|'''''Row 1'''''
|-
|''Iter''  ||Number of iterations
|-
|''n''    ||Number of trial ''x'', ''n''-''Iter'' is number of points in initial design
|-
|''nFunc'' ||Number of costly f(x) computed, ''nFunc'' <= ''n'', ''n''-''nFunc'' = rejected points
|-
|<nowiki>--->></nowiki> ||Time stamp (date and exact time of this printout)
|-
|''Cycle''||Cycle steps global to local. ''infStep'' is marked -1, 0 to ''N''-1 are global steps. Last step ''N'' in cycle is surface minimum
|-
|''R''    ||If the letter R is printed, the current step is a RESCUE step, i.e. the new point is already sampled in a previous step, instead the surface minimum is used as a rescue
|-
|''fnStar''||Target value fn_star (if set)
|-
|''fGoal'' ||Goal value (if set)
|-
|''fMin''  ||Best f(x) found so far. E.g. at 27/It 12 means ''n''=27, ''Iter''=12<br>''fMinI'' means the best f(x) is infeasible<br>''fMinF'' means the best f(x) is feasible (also integer feasible)
|-
|colspan="2"|'''''Row 2'''''
|-
|''max(F)''||Maximum of all f(x) in the initial set of points ''X''
|-
|''med(X)''||Median of all f(x) in the initial set of points ''X''
|-
|''rng(F)''||''maxF''-''fMin'', the range of f(x) values in the initial set ''X''
|-
|''pDist'' ||The size of the simply bounded region, <nowiki>||</nowiki>''x_U''-''x_L''<nowiki>||</nowiki><sub>2<sub>
|-
|''LipU''  ||Maximum Lipschitz constant for initial set ''X''
|-
|''LipUFt''||Maximum Lipschitz constant for initial set ''X'', using transform F
|-
|''objType''||Function transformation used during run, one of 0 to 8.
|-
|colspan="2"|'''''Row 3'''''
|-
|''xMin''  ||Best point in initial set ''X''
|-
|colspan="2"|'''''Row 4'''''
|-
|''xOptS''||User-given global optimum ''Prob.x_opt'' (if defined)
|- style="text-align:center;"
|colspan="2"|'''If ''PriLev'' > 2 and global optimum ''xOptS'' known and given in ''Prob.x_opt'' '''
|-
|colspan="2"|'''''Row 5'''''
|-
|''SumXO'' ||Sum of distances from global optimum ''xOptS'' to all sampled points ''X'' in experimental design
|-
|''MeanXO''||Mean of distances from global optimum ''xOptS'' to all sampled points ''X'' in experimental design
|-
|doO    ||Distance from global optimum ''xOptS'' to closest point of sampled points ''X'' in experimental design
|- style="text-align:center;"
|colspan="2"|'''If ''PriLev'' > 3'''
|-
|dXO    ||Minimal distance from global optimum ''xOptS'' to closest point of all sampled points ''X'' in experimental design
|-
|''snOptf''||Surface value at ''xOptS'', ''sn_f(xOptS)''
|-
|''snOptg''||Surface gradient at ''xOptS'', ''sn_g(xOptS)''
|-
|''snOptE''||Sum of negative eigenvalues of surface Hessian at ''xOptS'', sum((eig(sn_H(xOptS)) < 0))
|}


5 = All sample points same as the best point for MaxCycle last iterations.
{|class="wikitable"
 
!colspan="2"|PRINTING in MATLAB window in Iteration 1,2, ...
6 = All sample points same as previous point for MaxCycle last iterations.
|- style="text-align:center;"
 
|colspan="2"|'''''if ''IterPrint'' >= 1 or ''PriLev'' > 1'''''
7 = All feasible integers tried.
|-
|colspan="2"|'''Row 1'''
|-
|''Iter''||Number of iterations
|-
|''n''  ||Number of trial x, ''n''-''Iter'' is number of points in initial design
|-
|''nFunc''  ||Number of costly f(x) computed, ''nFunc'' <= ''n'', ''n''-''nFunc'' = rejected pnts
|-
|<nowiki>--->></nowiki>  ||Time stamp (date and exact time of this printout)
|-
|''fGoal''  ||Goal value (if set)
|-
|''fMin''    ||Best f(x) found so far. E.g. at 27/It 12 means n=27, Iter=12<br>''fMinI'' means the best f(x) is infeasible<br>''fMinF'' means the best f(x) is feasible (also integer feasible)<br>''IT'' implies reduction in last step, ''It'' no reduction last step
|-
|colspan="2"|'''Row 2 Header line'''
|-
|colspan="2"|
{|class="wikitable"
|#||f(x)||Task||onB||fnStar||doX||doM||doS||surfErr||f-Reduc||doO||ln10(my)
|}
|-
|colspan="2"|'''Row 3 to m+2 with m new sample points ''xNew(1,1:m)'' obtained in last iteration
|-
|''#''      ||i''th'' new point x = ''xNew(:,i)
|-
|''f(x)''  ||Costly f(x) value at x
|-
|''Task''  ||Which method that gave the new point
{|class="wikitable
!Value||Method
|-
|0,1,...,N-1||Global minimum in Target value search using target value fnStar
|-
|N ||Global minimum of RBF surface
|-
| -1||Global minimum of Target value -inf search (infStep)
|-
| -2,-3, ... ||Additional ''AddGNMin'' minima in Target Value Search
|-
| -2,-3, ... ||Additional ''AddSurfMin'' minima in RBF surface minimization
|}


9 = Max CPU Time reached.
|-
|-valign="top"
|''onB''   ||Number of coordinates on bound for new point, ''onB(x)''
|''cgoSave.mat''||To make a warm start possible, all CGO solvers  saves information in the file cgoSave.mat.  The file is created independent of the solver, which enables the user to call any CGO solver using the warm start information.  cgoSave.mat is a MATLAB mat-file saved to the current directory. If the parameter SAVE is 1, the CGO solver saves  the mat file every iteration,  which enables the user to  break the run and restart using warm start from the current  state. SAVE = 1 is currently always set by the CGO solvers. If the cgoSave.mat file fails to open for writing, the information is also available in the output field Result.CGO.WarmStartInfo, if the run was concluded without  interruption. Through a call to WarmDefGLOBAL, the Prob structure can be setup for warm start.  In this case, the CGO solver will not load the data from cgoSave.mat. The file contains the following variables:
|-
|-valign="top"
|''fnStar''||Target value used obtaining new point
|''Name ''||Problem name. Checked against the ''Prob.Name ''field if doing a warmstart.
|-
|-valign="top"
|''doX''    ||Minimal distance from ''x'' to sample set ''X'', min<nowiki>||</nowiki>''x-X''<nowiki>||</nowiki>
|''O ''||Matrix  with sampled points (in original space).
|-
|-valign="top"
|''doM''    ||Distance from ''x'' to (''xMin'',''fMin''), best point found, min<nowiki>||</nowiki>''x-xMin''<nowiki>||</nowiki>
|''X ''||Matrix  with sampled points (in unit space if SCALE==1)
|-
|-valign="top"
|''doS''    ||Distance from ''x'' to minimum on surface, min<nowiki>||</nowiki>''x-min_sn_y''<nowiki>||</nowiki>
|''F ''||Vector with function values (penalty added for costly Cc(x))
|-
|-valign="top"
|''surfErr''||Error between predicted and actual value of f(x), i.e. Costly f(x) - Surface value at ''x''
|''F m ''||Vector with function values (replaced).
|-
|-valign="top"
|''f-Reduc''||Function value reduction if ''fNew'' < ''fMin''
|''F00 ''||Vector of pure function values, before penalties.
|-
|-valign="top"
|''doO''    ||Distance from ''x'' to global optimum ''xOptS'' <nowiki>||</nowiki>''x-xOptS''<nowiki>||</nowiki> (if ''Prob.x_opt'' specified)
|''Cc''||MMatrix  with costly constraint values, ''C c''(''x''). ''nInit''Number of initial  points.
|-
|-valign="top"
|''ln10(my)''||Coefficient my in RBF interpolation
|''Fpen''||Vector with function values + additional penalty if infeasible using the linear constraints and noncostly nonlinear ''c''(''x'').
|-
|-valign="top"
|''x:''     ||x values for i:''th'' point, scaled back i ''SCALE'' == 1
|''fMinIdx''||Index of the best point found.
|-
|-valign="top"
|colspan="2"|'''Row m+3 with values for current global surface minimum (min_sn_y, min_sn)
|''rngState''||Current state of the random number generator used.
|-
|''Sn''     ||f(x) = ''min_sn'', ''onB'', ''doX'', ''doM'', ''doO'' values for ''min_sn_y'', and ''x:'' are values for ''min_sn_y'' transformed back to original coordinates if ''SCALE'' == 1
|-
|colspan="2"|'''''NOTE: All distances measured are in ''SCALED'' space [0,1]<sup>d</sup>, if ''SCALE' == 1'''''
|-
|colspan="2"|'''Row m+4 Status row when updating RBF. Interpolation quality, illconditioning etc'''
|-
|''LU''        ||Estimate of condition number for current interpolation matrix
|-
|''minDist''   ||Minimal distance between points in sample set ''X'', if small value ill-conditioning might occur
|-
|''errsnFLast'' ||Difference between f(x) transformed and RBF surface value at last point added
|-
|''errsnFmax'' ||Worst difference between f(x) transformed and RBF surface for ''x'' in set ''X'', idx for worst point given.
|-
|''errCVmin''   ||Value and index for point with least cross validation error
|-
|''errCVminR'' ||Value and index for point with least cross validation error normalized with <nowiki>|</nowiki>f(x)<nowiki>|</nowiki>
|-
|''CrossVal''   ||Cross validation measure, deleting one interpolation point at the time
|-
|''InterpErr'' ||Maximal interpolation error using f(x) non-transformed. OK if < 10<sup>-6</sup>
|}
|}



Latest revision as of 17:16, 21 June 2014

Notice.png

This page is part of the CGO Manual. See CGO Manual.

Purpose

Solve general constrained mixed-integer global black-box optimization problems with costly objective functions.

The optimization problem is of the following form


where ; ; the linear constraints are defined by , ; and the nonlinear constraints are defined by . The variables are restricted to be integers, where is an index subset of possibly empty. It is assumed that the function is continuous with respect to all variables, even if there is a demand that some variables only take integer values. Otherwise it would not make sense to do the surrogate modeling of used by all CGO solvers.

f (x) is assumed to be a costly function while c(x) is assumed to be cheaply computed. Any costly constraints can be treated by adding penalty terms to the objective function in the following way:

where weighting parameters wj have been added. The user then returns p(x) instead of f (x) to the CGO solver.

Calling Syntax

Result = arbfMIP(Prob,varargin) 
Result = tomRun('arbfMIP', Prob);

Description of Inputs

Problem structure

The following fields are used in the problem description structure Prob:

Input Description
Name See Common input for all CGO solvers
FUNCS.f
FUNCS.c
x_L
x_U
b_L
b_U
A
c_L
c_U
WarmStart
MaxCPU
user
PriLevOpt
f_Low
optParam
CGO See the table below but also this table for input common to all CGO solvers
GO See common input for all CGO solvers
MIP See common input for all CGO solvers
varargin Additional parameters to arbfmip are sent to the costly f(x)
- Special ARBF algorithm parameters in Prob.CGO -
rbfType Selects type of radial basis function
Value Type
1 Thin Plate Spline
2 Cubic Spline (default)
3 Multiquadric
4 Inverse multiquadric
5 Gaussian
6 Linear.
infStep If =1, add search step with target value -inf first in cycle.
Default 0
TargetMin Which minimum of several to pick in target value problem:
Value Minimum picked
0 Use global minimum.
1 Use best interior local minima, if none use global minimum.
2 Use best interior local minima, if none use RBF interior minimum.
3 Use best minimum with lowest number of coefficients on bounds.

Default is TargetMin = 3.

fStarRule Global-Local search strategy. N = cycle length.
Define min_sn as the global minimum on surface.
Value fStar target value
1 min_sn - ((N - (n - nInit))/N )2 * Deltan (Default)
2 min_sn - (N - (n - nInit))/N * Deltan.
Strategy 1 and 2 depends on Deltan estimate (see DeltaRule).
3 -inf-step, min_sn-k *0.1*|min_sn| k = N,...,0.
If infStep true, addition of -inf-step first in cycle.

Strategy names in Gutmanns thesis: III, II, I

DeltaRule 1 = Skip large f(x) when computing f(x) interval Delta.
0 = Use all points.
If objType > 0, default DeltaRule = 0, otherwise default is 1.
eps_sn Relative tolerance used to test if the minimum of surface, min_sn, is sufficiently lower than the best point (fMin) found. Default is eps_sn = 10-7.

Description of Outputs

Result structure

The output structure Result contains results from the optimization.
The following fields are set:

Field Description
x_k See Common output for all CGO solvers for details.
f_k
Iter
FuncEv
ExitText
ExitFlag Always 0
Inform Information parameter.
Value Signification
0 Normal termination.
1 Function value f(x) is less than fGoal.
2 Error in function value f (x), |f - fGoal| <= fTol, fGoal = 0.
3 Relative Error in function value f (x) is less than fTol, i.e. |f - fGoal|/|fGoal| <= fTol.
6 All sample points same as previous point for the last 11 iterations.
7 All feasible integers tried.
9 Max CPU Time reached.
CGO Subfield WarmStartInfo saves warm start information, the same information as in cgoSave.mat, see Common output for all CGO solvers#WSInfo.

Output printing

PRINTING in MATLAB window in Iteration 0 after Experimental Design
If IterPrint >= 1 or PriLev > 1
Row 1
Iter Number of iterations
n Number of trial x, n-Iter is number of points in initial design
nFunc Number of costly f(x) computed, nFunc <= n, n-nFunc = rejected points
--->> Time stamp (date and exact time of this printout)
Cycle Cycle steps global to local. infStep is marked -1, 0 to N-1 are global steps. Last step N in cycle is surface minimum
R If the letter R is printed, the current step is a RESCUE step, i.e. the new point is already sampled in a previous step, instead the surface minimum is used as a rescue
fnStar Target value fn_star (if set)
fGoal Goal value (if set)
fMin Best f(x) found so far. E.g. at 27/It 12 means n=27, Iter=12
fMinI means the best f(x) is infeasible
fMinF means the best f(x) is feasible (also integer feasible)
Row 2
max(F) Maximum of all f(x) in the initial set of points X
med(X) Median of all f(x) in the initial set of points X
rng(F) maxF-fMin, the range of f(x) values in the initial set X
pDist The size of the simply bounded region, ||x_U-x_L||2
LipU Maximum Lipschitz constant for initial set X
LipUFt Maximum Lipschitz constant for initial set X, using transform F
objType Function transformation used during run, one of 0 to 8.
Row 3
xMin Best point in initial set X
Row 4
xOptS User-given global optimum Prob.x_opt (if defined)
If PriLev > 2 and global optimum xOptS known and given in Prob.x_opt
Row 5
SumXO Sum of distances from global optimum xOptS to all sampled points X in experimental design
MeanXO Mean of distances from global optimum xOptS to all sampled points X in experimental design
doO Distance from global optimum xOptS to closest point of sampled points X in experimental design
If PriLev > 3
dXO Minimal distance from global optimum xOptS to closest point of all sampled points X in experimental design
snOptf Surface value at xOptS, sn_f(xOptS)
snOptg Surface gradient at xOptS, sn_g(xOptS)
snOptE Sum of negative eigenvalues of surface Hessian at xOptS, sum((eig(sn_H(xOptS)) < 0))
PRINTING in MATLAB window in Iteration 1,2, ...
if IterPrint >= 1 or PriLev > 1
Row 1
Iter Number of iterations
n Number of trial x, n-Iter is number of points in initial design
nFunc Number of costly f(x) computed, nFunc <= n, n-nFunc = rejected pnts
--->> Time stamp (date and exact time of this printout)
fGoal Goal value (if set)
fMin Best f(x) found so far. E.g. at 27/It 12 means n=27, Iter=12
fMinI means the best f(x) is infeasible
fMinF means the best f(x) is feasible (also integer feasible)
IT implies reduction in last step, It no reduction last step
Row 2 Header line
# f(x) Task onB fnStar doX doM doS surfErr f-Reduc doO ln10(my)
Row 3 to m+2 with m new sample points xNew(1,1:m) obtained in last iteration
# ith new point x = xNew(:,i)
f(x) Costly f(x) value at x
Task Which method that gave the new point
Value Method
0,1,...,N-1 Global minimum in Target value search using target value fnStar
N Global minimum of RBF surface
-1 Global minimum of Target value -inf search (infStep)
-2,-3, ... Additional AddGNMin minima in Target Value Search
-2,-3, ... Additional AddSurfMin minima in RBF surface minimization
onB Number of coordinates on bound for new point, onB(x)
fnStar Target value used obtaining new point
doX Minimal distance from x to sample set X, min||x-X||
doM Distance from x to (xMin,fMin), best point found, min||x-xMin||
doS Distance from x to minimum on surface, min||x-min_sn_y||
surfErr Error between predicted and actual value of f(x), i.e. Costly f(x) - Surface value at x
f-Reduc Function value reduction if fNew < fMin
doO Distance from x to global optimum xOptS ||x-xOptS|| (if Prob.x_opt specified)
ln10(my) Coefficient my in RBF interpolation
x: x values for i:th point, scaled back i SCALE == 1
Row m+3 with values for current global surface minimum (min_sn_y, min_sn)
Sn f(x) = min_sn, onB, doX, doM, doO values for min_sn_y, and x: are values for min_sn_y transformed back to original coordinates if SCALE == 1
NOTE: All distances measured are in SCALED space [0,1]d, if SCALE' == 1
Row m+4 Status row when updating RBF. Interpolation quality, illconditioning etc
LU Estimate of condition number for current interpolation matrix
minDist Minimal distance between points in sample set X, if small value ill-conditioning might occur
errsnFLast Difference between f(x) transformed and RBF surface value at last point added
errsnFmax Worst difference between f(x) transformed and RBF surface for x in set X, idx for worst point given.
errCVmin Value and index for point with least cross validation error
errCVminR Value and index for point with least cross validation error normalized with |f(x)|
CrossVal Cross validation measure, deleting one interpolation point at the time
InterpErr Maximal interpolation error using f(x) non-transformed. OK if < 10-6

Description

arbfMIP implements the Adaptive Radial Basis Function (ARBF) algorithm. The ARBF method handles linear equality and inequality constraints, and nonlinear equality and inequality constraints, as well as mixed-integer problems.

M-files Used

daceInit.m, iniSolve.m, endSolve.m, conAssign.m, glcAssign.m, snSolve.m, gnSolve.m, expDesign.m.

MEX-files Used

tomsol

See Also

rbfSolve.m and ego.m

Warnings

Observe that when cancelling with CTRL+C during a run, some memory allocated by arbfMIP will not be deallocated. To deallocate, do:

''>> ''clear cgolib