User's guide:
Representation-independent parameters
The parameters are organized in sections.
The first section only contains the random seed.
###### General ######
# --help=0 # -h : Prints
this message
Whether or not help was requested is handled
through a boolean parameter
# --seed=988700289 # -S
: Random number seed
The seed for the Random
Number Generator
###### Output ######
This section contains parameters related to output
(to screen, to files, graphical, ...).
# --useEval=1 # Use nb of
eval. as counter (vs nb of gen.)
Boolean parameter, whether or not you want the
nb of evluations to be displayed and used as counter in plots
# --printBestStat=1 # Print
Best/avg/stdev every gen.
Boolean parameter, toggles screen output of indicated
statistics
# --plotBestStat=0 # Plot
Best/avg Stat
Boolean parameter, toggles gnuplot output of
best and average plots (Linux only at the moment)
# --BestFileName=best.xg
# Name of file for Best/avg/stdev
String parameter, if present, the statistics
are stored in that file (no default)
# --printPop=0 # Print sorted
pop. every gen.
Boolean parameter, adds a dump of the whole population
to the screen every generation
# --printFDC=1 # Print FDC
coeff. every gen.
Boolean parameter, adds Fitness Distance Correlation
to output every generation
# --plotFDCStat=0 # Plot
FDC scatter plot
Boolean parameter, toggles the Fitness Distance
Correlation plot (Fitness vs distance to best)
# --plotHisto=0 # Plot histogram
of fitnesses
Boolean parameter: if on, gnuplot is used to
plot the sorted population (fitness vs rank). Gives a graphical idea of
the diversity.
###### Persistence ######
This section contains parameters handling job
restart
# --Load= # -L : A save
file to restart from
String parameter: if present, the initial population
(and the RNG status) is read from indicated file. That file must
come from a previous save (or must be in same format!), i.e. must contain
a popualtion, the RNG and all parameters. If no other parameter is modified,
using a previously saved population and RNG will give exactly the same
results than having run that previous run longer. And a way to be sure
to re-use the same parameters is to ... use that very save file as parameter
file, as it contains all actual parameters in the right format.
Note that if not enough individuals are read,
the remaining are randomly initialized. No default value.
# --recomputeFitness=0 #
-r : Recompute the fitness after re-loading the pop.?
Boolean parameter: in case some individuals are
read from a file, their fitness is read too. If this one is true, it is
nevertheless recomputed.
# --saveFrequency=0 # Save
every F generation (0 = only final state, absent = never)
Integer parameter: interval between two dump
to disk of the whole population (+RNG + parameters) to disk, in a file
named genNN.sav, where NN is the generation number. If this prameter
is present (even with 0 or negative value), the final population will always
be saved, whatever the reason for stopping. Hence the only way to avoid
all saves is to omit the parameter (there is no default value).
# --saveTimeInterval=0 #
Save every T seconds (0 or absent = never)
Integer parameter: time interval between two
population (+RNG + parameters) dumps to disks. Files are names timeNN.sav.
See pervious parameter description for ore details. No default value.
# --status=t-eoGA.status
# Status file
String parameter: name of the status file (that
contains all parameters in the input format). There is no way to avoid
creating that file except recompiling ... or giving the name /dev/null
(Unix).
###### Stopping criterion
######
This section allows to decide when the algorithm
will stop.
# --maxGen=100 # -G : Maximum
number of generations (0 = none)
Integer parameter: maximum number of generations.
Default is 0 which is equivalent to infinity.
# --steadyGen=100 # -s :
Number of generations with no improvement
Integer parameter: stops whenever that number
of generations is passed without any improvement of the best fitness in
the population, provided the following minimum number of generations has
been done. No default value.
# --minGen=0 # -g : Minimum
number of generations
Integer parameter: the above steadyGen parameter
starts its job only after that minimum nuber of generations is passed.
No default value.
# --maxEval=0 # -E : Maximum
number of evaluations (0 = none)
Integer parameter: maximum number of generations.
No default value.
# --targetFitness=0 # -T
: Stop when fitness reaches
Real-valued parameter: the algorithm stops whenever
the best fitness reaches that target. No default value.
# --CtrlC=0 # -C : Terminate
current generation upon Ctrl C
Boolean parameter: if true, Ctrl C only stops
after the current generation as completed (eventually dumping population
to a file if some saver is active).
###### engine ######
In this section, one chooses all components of
the Evolution Engine (selection, replacemenet and the like).
# --selection=DetTour(2)
# -S : Selection: Roulette, DetTour(T), StochTour(t) or Sequential(ordered/unordered)
String parameter: Name of selection procedure.
Availabable are the roulette wheel
(name Roulette,
fitness scaling coming soon), deterministic
tournament (name DetTour
with size - integer > 2 - in parentheses right after the name, use double
quotes on the command line), stochastic tournament (name StochTour
with probability - float in [0.5, 1] - in parentheses), sequential (name
Sequential,
all individuals in turn), either from best to worst (option ordered
in parentheses), or in random ordered (option unordered)
or finally repeated independent uniform choices (name Random).
# --offspringRate=100% #
-O : Nb of offspring (percentage or absolute)
# --replacement=Comma # -R
: Replacement: Comma, Plus or EPTour(T)
String parameter: Name of replacement procedure.
Availabable are
# --weakElitism=0 # -w :
Old best parent replaces new worst offspring *if necessary*