FAMoS provides an automated and unbiased model selection algorithm that aims at determining the most appropriate subset of model parameters to describe a specific data set. Due to its flexibility with respect to the cost/optimisation function, FAMoS can handle many different mathematical structures, including for example regression models and ODEs.
You can install FAMoS from github with:
# install.packages("devtools")
devtools::install_github("GabelHub/FAMoS")
# alternative installation command
devtools::install_git("git://github.com/GabelHub/FAMoS.git", branch = "master")
FAMoS uses three different methods to find appropriate models to test:
FAMoS keeps track of the methods used in the previous iterations and dynamically changes them according to the outcome of each iteration.
FAMoS is designed to allow for a maximum of flexibility regarding the fitting procedures and model types in R. While it comes with the default option to fit the cost function via optim, it also allows the users to specify their own optimisation routines, hence making it possible to perform model selection based on various other R packages.
FAMoS makes use of the future-package which allows for easy parallelisation, meaning many different models can be tested simultaneously if the required computational resources are available.
FAMoS keeps track of previously tested models and checks also that each model fulfills all user-specified restrictions, therefore testing only relevant models and saving computational resources.
As a simple example, we generate a simple data set generated by two parameters and apply FAMoS on a global model consisting of five different parameters.
library(FAMoS)
#setting data
true.p2 <- 3
true.p5 <- 2
sim.data <- cbind.data.frame(range = 1:10,
y = true.p2^2 * (1:10)^2 - exp(true.p5 * (1:10)))
#define initial parameter values and corresponding test function
inits <- c(p1 = 3, p2 = 4, p3 = -2, p4 = 2, p5 = 0)
cost_function <- function(parms, binary, data){
if(max(abs(parms)) > 5){
return(NA)
}
with(as.list(c(parms)), {
res <- p1*4 + p2^2*data$range^2 + p3*sin(data$range) + p4*data$range - exp(p5*data$range)
diff <- sum((res - data$y)^2)
#calculate AICC
nr.par <- length(which(binary == 1))
nr.data <- nrow(data)
AICC <- diff + 2*nr.par + 2*nr.par*(nr.par + 1)/(nr.data - nr.par -1)
return(AICC)
})
}
#set swap set
swaps <- list(c("p1", "p5"))
#perform model selection
res <- famos(init.par = inits,
fit.fn = cost_function,
homedir = tempdir(),
method = "swap",
swap.parameters = swaps,
init.model.type = c("p1", "p3"),
optim.runs = 1,
data = sim.data)
FAMoS returns a lot of verbose output, telling the user what’s currently happening (Note: The output can be turned on and off by using the option verbose). In the beginning, the overall settings are defined and the corresponding directories are created (if they don’t exist).
#> Initializing...
#> Create FAMoS directory...
#>
#> Algorithm run: 001
#> Refitting disabled.
#> Starting algorithm with method 'swap'
In each iteration, FAMoS identifies new models to be tested based on the current search method:
#> FAMoS iteration #3 - method: forward
#> Add parameter p1
#> Add parameter p2
#> Add parameter p4
#> Time passed since start: 00:00:00
Each model will be submitted and tested. Since FAMoS uses futures for evaluation, the search process can be easily parallelised by setting the corresponding future plan. Every model is subsequently evaluated by performing (multiple) optimisation routines based either on the default fitting routine optim or a user-specified fitting routine (see the vignettes for examples).
After all models have been evaluated, the algorithm reads in the results and checks, if a better model was found
#> Evaluate results ...
#> Best selection criterion value of this run is 10
#> Parameter p2 was added
#> Time passed since start: 1.92 secs
The cycle continues until no better model is found based on the currently used methods. After halting, the results are returned
#> Best model found. Algorithm stopped.
#> FAMoS run 001
#> Selection criterion value of best model: 7
#> Best model (binary): 01001
#> Best model (vector):
#> p1 p2 p3 p4 p5
#> 0 1 0 0 1
#> Estimated parameter values:
#> p1 p2 p3 p4 p5
#> 0 -3 0 0 2
#> Time needed: 3.84 secs
The vector init.par is one of two mandatory variables that need to be specified. It contains the names and initial values of all model parameters, that FAMoS is supposed to analyse. In our example above, we specified this vector as
Depending on the starting model, FAMoS automatically extracts the corresponding values and uses them for its first iteration only. All following iterations inherit the best values from previous fits.
Additional specifications for the use of the inital parameter vector can be supplied by the options do.not.fit and default.val.
To allow independence of specific mathematical model structures, the user can specify any cost or optimisation function. If a cost function is used, it has to take the complete parameter vector as an input (names parms) and has to return a selection criterion value. If use.optim = TRUE, the cost function needs to return a single numeric value, which corresponds to the selection criterion value. However, if use.optim = FALSE, the cost function needs to return a list containing in its first entry the selection criterion value and in its second entry the named vector of the fitted parameter values (non-fitted parameters are internally assessed).
Additionally, the cost and optimisation functions can also use the optional input binary, which contains the binary information of the current model, i.e. the information which parameters are currently considered to be fitted. This is useful to extract the to-be-fitted parameters, if a custom optimisation functions is used
Due to this flexible structure, FAMoS is able to tackle many different problems, e.g. modelling approaches like linear regression, ODEs or PDEs.
FAMoS generates and saves many different files, in order to make results available over time as well as to simultaneously running FAMoS runs. homedir specifies the folder, in which all results are going to be stored. The default is set to the current working directory.
In order to exclude some parameters from the fitting procedures, their names can be specified in the do.not.fit option. This allows to test different model restrictions without needing to change either init.par or fit.fn. For example, if we wanted to exclude the parameter p4 from our analysis, we would specify initially
#define initial parameter values
inits <- c(p1 = 3, p2 = 4, p3 = -2, p4 = 2, p5 = 0)
no.fit <- c("p4")
and pass this option on to FAMoS. Note that excluded parameters are automatically removed from the initial model, if init.model.type = “random”, init.model.type = “global” or init.model.type = “most.distant” is used. If the user-specified initial model contains an excluded parameter, an error will be returned.
FAMoS can use three different methods to search for different models to test: Forward search, backward elimination and swap search. As the algorithm dynamically changes these methods over the course of each iteration, the option method only specifies the starting method.
If the algorithm is able to find a better model, the current method will be used in the next iteration as well (except the swap method, which always uses a forward search next - if it doesn’t terminate in that step). If no better model is found, the algorithm will change the method according to the following scheme:
current method | previous method | next method |
---|---|---|
forward | backward | swap (or terminate) |
forward | forward or swap | backward |
backward | backward | forward |
backward | forward | swap (or terminate) |
swap | forward or backward | terminate |
In case the swap method is not used (due to unspecified critical or swap sets), the algorithm will terminate after a succession of an unsuccessful forward and backward search.
To verify if FAMoS results are consistent, it is important to run the algorithm with different starting models. To set the initial model, the user can either use the built-in options random (which generates a random model), global (which uses the complete model as a starting point) or most.distant (uses the model most dissimilar to all previously tested models). Alternatively, the user can specify a model by supplying a parameter vector containing the names of the initial model.
#Three options for the starting model
init.model1 <- "random" # generates a random starting model
init.model2 <- "global" # uses all available parameters
init.model3 <- "most.distant" # uses the most dissimilar model
init.model4 <- c("p1", "p4") # a user-specified model
In case random, global or most.distant are chosen, FAMoS automatically applies critical conditions and removes excluded parameters (see options critical.parameters and do.not.fit).
Before testing a model, FAMoS checks if this model has been tested before. In case refit = FALSE (default) is specified, the model will not be tested again. If refitting is set to TRUE, FAMoS will try to optimise the model again. If the new run returns a better fit, the old results will be overwritten, otherwise the new run will be discarded.
Refitting makes sense if the model optimisation is dependent on the initial parameter combination (see also optim.runs). If a model is reencountered, it might well be that the new parameter set to be tested with is much more appropriate than the previous one, especially if this reencounter happens within the same FAMoS run.
The default fitting routine that FAMoS relies on is the built-in function optim. However, by setting use.optim = FALSE, the user can use any other optimisation routine suitable. The optimisation routine then has to be included in the cost function fit.fn which needs to return a list containing the current selection value criterion as well as the parameter values used. See the vignettes for an example.
Finding the best fit for each model is crucial to guarantee a correct model selection procedure. Often, fitting a model once is enough and repeating the fitting procedure with different initial conditions does not lead to new results. Sometimes, however, one wants to run multiple fits for each model, e.g. if the parameter space is very large. To do so, the user can specify optim.runs, which gives the number of fitting attempts. For each optimisation run a different starting condition is used. The first fitting attempt takes the inherited parameter vectors from previous runs, while all following fitting attempts randomly samples parameter vectors to test (see also random.borders).
If multiple optimisation runs are performed, FAMoS will return the best of these runs.
In each optimisation run fitting in FAMoS is either performed with the built-in function optim, which is repeatedly evaluated until convergence, or a custom optimisation routine, which is evaluated only once. As the default optimisation method is based on the Nelder-Mead approach, which often tends to not give reliable results if only one optimisation is performed, the optimisation for each fitting attempt is wrapped into a while-loop, in which the fitting procedure is repeatedly halted and restarted (based on the options control.optim), until the relative convergence tolerance in con.tol is reached.
The skeleton of the underlying code looks like this:
for(i in 1:optim.runs){#number of fitting attempts specified by optim.runs
start.parameters <- either the inherited or a randomly sampled set (for i > 2)
if(use.optim == TRUE){
#If use.optim = TRUE, the fitting routine is evaluated in a while loop
while(abs((old.optim.value - new.optim.value)/old.optim.value) < con.tol){
... run optim with start.parameters ...
start.parameters <- new parameters estimated by optim
}
}else{
#If use.optim = FALSE, the custom optimisation routine is evaluated
#only once in each optimisation run
... run custom optimisation with start parameters ...
}
}
Normally, FAMoS sets the parameters that are not fitted equal to zero. However, this might not be appropriate if, for example, a parameter describes an initial condition or a baseline turnover. Here, default.val allows to specify the value that a parameter assumes, if it is not fitted. default.val needs to be given as a named list, which can either store numerical values or the name of the parameter from which the value should be inherited. For example
#define initial parameter values
inits <- c(p1 = 3, p2 = 4, p3 = -2, p4 = 2, p5 = 0)
#set default values
def.val <- list(p1 = 2, p2 = -5, p3 = "p1", p4 = 0, p5 = "p4")
Here, the values of p1, p2, and p4 are set to their respective values. However, p3 and p5 will inherit their values from p1 and p4, respectively. This feature is useful if two rates describe similar processes and one wants to test if the difference between them is significant enough to warrant the fitting of an additional parameter. Here’s a short example
cost.function <- function(parms){
x <- par1 + par2*x
y <- par3 + par4*x
}
def.val <- list(p1 = 0, p2 = 0, p3 = "p1", p4 = "p2")
Note that the parameter inheritance cannot be chained, meaning that entries that point to another parameter need a numeric value to access
#INCORRECT use of default.val
def.val <- list(p1 = 1, p2 = "p1", p3 = "p2", p4 = "p3")
#CORRECT use of default.val
def.val <- list(p1 = 1, p2 = "p1", p3 = "p1", p4 = "p1")
The swap search that FAMoS can perform relies on sets which specify parameters that can be swapped by one another. For example, if we wanted to allow parameters p1, p2 and p3, as well as p4 and p5 to be replaceable by each other, we would specify:
In some cases, it does not make sense to fit certain submodels of the global model to the data, as they might lack crucial parameters. FAMoS can incorporate these restrictions by the specification of critical parameter sets. For example, if at least one of the first three parameters need to be present in the model, and all models that don’t feature p4 are not correct, we can specify:
All critical sets are also automatically used in the swap search.
Since the parameters of all optim.runs larger than one are sampled based on a random uniform distribution, it might be important to set the correct sampling intervals. By default, FAMoS samples parameters with a 100% deviation of the inherited parameter values (for example, if a model contains two parameters, and the currently best values are p1 = 0.1 and p2 = -1000, the sampled values will lie in the intervals [0,0.2] and [-2000,0], respectively). Alternatively, the user can specify relative or absolute sampling intervals. For relative intervals, a numeric value has to be given for each parameter denoting its relative deviation. For absolute sampling intervals, a matrix containing the lower and upper borders has to be specified. Here’s an example:
#relative sampling ranges
random.bord1 <- 0.3 # deviates all parameters by 30%
random.bord2 <- c(0.1, 0.5, 0.2) # deviates the parameters by 10%, 50% and 20%, respectively
#absolute sampling ranges
random.bord3 <- matrix(c(1,2), nrow = 1) #uses the interval [1,2] for all parameter samples
random.bord4 <- cbind(c(0,-10, 0.3), c(5, -9, 0.7)) #uses the intervals [0,5], [-10,-9] and [0.3, 0.7] to sample the respective parameters
#use a function to sample the results
random.bord5 <- rnorm #note that in this case, 'mean' and 'sd' need to passed to famos as well, if other values than the default settings should be used
Specifies the control options used for optim (see optim.runs for more details).
If parameters values span over several orders of magnitudes, using the built-in option parscale in optim can reduce the numbers of evaluations needed. Setting parscale.pars = TRUE automatically adjusts the scaling procedure in optim. In our experience, using parscale.pars = TRUE is usually beneficial if a large number of parameters with different orders of magnitude need to be fitted. However, the actual performance is very problem-specific and therefore we would recommend initially testing both approaches to see which one performs better for the problem at hand. Also, one needs to make sure that the other options given in control.optim and con.tol are specified appropriately.
Specifies the relative convergence tolerance and determines when the repeated use optim fits will be terminated (see optim.runs for more details).
If true, a plot of the current FAMoS performance is stored in the folder “FAMoS-Results/Figures/”, which will be updated during each iteration.
To allow for parallelisation, FAMoS uses the future package by Henrik Bengtsson (see https://github.com/HenrikBengtsson/future). To use futures, the option needs to be set to TRUE and a future plan needs to be specified.
By default, FAMoS terminates once all search methods are exhausted. However, if reattempts is set to true, FAMoS will instead jump to a distant model and continues to search the model space from there. The algorithm is then terminated if the best model is re-encountered (or if no other models are available to test).
If futures are used during a FAMoS run, there will be a message printed every X seconds, informing the user which models fits are still running. log.interval allows to specify the interval of X. Default to 10 minutes (600 seconds).
As FAMoS allows to use previously generated results in later runs, it performs a consistency check to see if the previous results were generated by the same cost function. If this is not the case, FAMoS requires user input to decide what to do next. However, if run non-locally, supplying user input might not b possible. Therefore, interactive.session can be set to FALSE. This will result in FAMoS issuing a warning instead of an interaction prompt.
The verbose output of FAMoS can be turned on and off. If verbose = FALSE, only a minimum of information is shown.