• Calibration of Ants

    Calibration of a NetLogo model

    This market entry calibrates the Ants NetLogo model with an Evolutionary/Genetic Algorithm (EA/GA) in OpenMOLE. It proposes 2 aproach, the first on uses a generationnal NSGA2 which is very classical. The second one is better fit for distributed computing and uses an island model distribution strategy.

    Packaged archive (can be imported in OpenMOLE)
    Source repository

  • Fire in NetLogo


    The Fire model is a common NetLogo example. It studies the percolation of a fire in a forest depending on the density of the forest. This worklow studies the impact of the density factor for a fixed population size. To do this, it perform a design of experiment where the density factor ranges from 20% to 80% by steps of 10.

    Since the Fire model is stochastic, the workflow replicates the execution for each instance of the density factor. Results for each replication are be stored it in a CSV file.

    Packaged archive (can be imported in OpenMOLE)
    Source repository

  • Metamimetic Networks


    This is an implementation of a prisonner’s dilemma metamimetic game for different network topologies under netlogo 5.1.0.

    Agents play the prisoner's dilemma game with each one of their neighbours in a torus lattice or a network (small world or random).

    The parameter p corresponds to the strength of dilemma in the widget:

                                 Payoff Matrix
          BEHAVIORS   Cooperate            Defect
           Cooperate |(1-p, 1-p)            (0, 1)
      YOU            |
           Defect    |(1, 0)                (p, p)
            (x, y) = x: your score, y: your partner's score
            Note: higher the score (amount of the benefit), the better.

    The agents can have one of 4 types:

    Maxi : The agent tries to maximize the score (payoff)
    Mini : The agent tries to minimize the score
    Conformist: The agent tries to behave as the majority
    Anti-conformist: The agent tries to behave as the minority

    Each round agents play they copy the most succesfull agent in their neighborhood according to their own current type:

    A Maxi agent would copy the type and behavior (C or D) of the agent in its neighborhood with highest payoffs. A Mini agent would copy the type and behavior (C or D) of the agent in its neighborhood with lower payoffs. A Conformist would copy the type and behavior (C or D) that the majority of its neighborhood is using. An Anti-Conformist would copy the type and behavior (C or D) that the minority of its neighborhood is using.


    Decide the topology structure or load one. Decide a Number of Agents that will be playing. Decide what percentage of agents should cooperate at the initial stage with inicoop. Decide what is the strenght of the dilemma p. If you are not loading a topology; choose the parameters for the desired topology. Choose to add noise to the model by renovating the population and have some agents die.


    At each period:

    Each agent A plays a prisoner's dilemma game pairwise with all of its neighbours. The scores for all the pairwise games played are summed up to become the new payoffs of the agent.

    Each agent looks at the payoffs, decision-making rules and behaviours of other agents in its neighbourhood Gamma_A.

    For any agent A, if according to A's type (payoffs based or non-materialistic) there is one neighbour B that is more successful than A himself, and if B has a different decision-making rule, then A copies the rule of agent B. In the case of two or more candidates to copy, then A chooses one of the rules at random.

    If according to its new rule of behaviour and its associated utility function, A is still not among the most successful agents in the neighborhood, then A copies the behaviour of the neighbour with the best situation.


    If agent A had the conformist type and if the majority of its neighbours have turned to maxi since last round, then A will adopt the maxi rule. Here, the imitation rule is used to update itself (reflexivity). If same agent A, which is now a maxi agent, played C last round but a D-player did strictly better than all of A’s neighbours (A included), then A will become a D-player. Here, the imitation rule is used to update the behaviour (metacognition).


    How do populations change with the strength of the dilemma? What is the effect of noise with renovation of the population? Where are agents located in the network at the attractor? What is the effect of the initial disposition towards cooperation? Are there differences in the final populations for each topology?

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  • Model Exploration Tutorial

    Calibration, validation and sensitivity analysis of complex systems models with OpenMOLE

    Guillaume Chérel, 2015-10-23

    Translated from French by Guillaume Chérel, Mathieu Leclaire, Juste Raimbault, Julien Perret. Edited by Sarah Wise. Corrected by Romain Reuillon.

    Complex systems models are difficult to explore through simulation because they can involve many parameters, stochasticity, and nonlinear behaviours. We need to find ways to solve important modelling problems, including calibration, sensitivity analysis, andvalidation. In this tutorial, we will see how evolutionary algorithms can help us solve these problems for complex systems models, and how to use them in OpenMOLE.

    Script files accompanying this document

    This document is part of a git repository which also contains the OpenMOLE script files to execute the experiments presented below, as well as a Haskell source file to perform the simulation results analysis and plotting. A link to the corresponding OpenMOLE script is given below in each section title. Please refer to the OpenMOLE documentation for directions on how to use these scripts.

    Data analysis and plotting is done with Haskell. The file analyses/analyses.hs contains commented functions for carrying out the analysis. The directory analyses is formatted as a Stack project which deals with the necessary dependencies. To use it, install stack and run:

    $ cd analyses #move into the directory
    $ stack setup #let stack install the right ghc version
    $ stack build #compile the project and install the dependencies
    $ stack exec EAForModelling #generate the figures

    You can also generate the figures interactively with ghci. In place of the last command, use:

    $ stack ghci

    This starts the haskell interpreter and you can call functions defined in analyses.hs directly, such as plot_ants_calibrate, plot_ants_pse and plot_ants_profiles.

    The modelling problem we are trying to address

    We are developing a model to explain an observed phenomenon. For example, we would like to explain the formation of paths by ants between their nest and a food source. We propose the following mechanism:

    • in general, ants move randomly
    • when ants find food, they pick some up and go back to the nest
    • on their way back, they drop pheromones
    • when an ant detect pheromones around it, it moves toward the pheromones
    • pheromones evaporate at a given rate (a parameter of the model)
    • when pheromones are dropped by an ant, they diffuse with a certain diffusion rate (a parameter of the model).

    Once this mechanism is proposed, the challenge is to test it and assess its explanatory or scientific value. These rules can be implemented algorithmically, which yields a model that can be simulated. We will use a version of the NetLogo model ants modified to include additional output variables. It is available in the file ants.nlogo.


    The first thing to verify is that the model is able to reproduce the phenomena it was designed to explain. We are thus looking for parameter values with which the simulation reproduces the phenomena. This is the problem of inverse calibration. It can be translated into an optimisation problem: find the parameter values which minimise the distance between experimental measurements or field data and the simulation results. Evolutionary algorithms were first designed as optimisation methods and can be used to find solutions to these kinds of problems.

    Knowing that a model can reproduce an observed phenomenon does not guarantee that it represents the way the phenomenon is actually produced in nature. Other explanations could be possible. The proposed model is but one candidate among several possibilities. It is probably out of reach to be certain that it is the right one, and there can be more than one valid interpretation of the same phenomena. But we can attempt to test its validity. This is the problem of model validation.

    One way to test the model is to look for its different possible behaviours; that is, not only those we have designed the model to reproduce, but also unexpected ones. By looking for unexpected behaviours, we can identify those which are not acceptable, for example because they differ from empirical data. We also can determine whether certain kinds of behaviours are absent, which implies the inability of the model to generate such behaviours. These observations of the model, if they contradict empirical observations, give us the opportunity to revise the model assumptions or find bugs in the code. They also give us the opportunity to express new hypotheses to be tested empirically. By reiterating this process of observation of the simulated model, the formulation of hypotheses, the empirical testing of these hypotheses, and model revision in accordance with the new observations, we can enhance our understanding of the phenomena and increase our confidence in the models we build.

    Identifying the set of distinct behaviours a model can possibly exhibit is not an optimisation problem, as we are not looking for any one behaviour in particular. Evolutionary algorithms can help us address this problem by following the approach of Novelty Search, as we will explain below.

    A third important modelling problem is sensitivity analysis. It deals with understanding how the different model parameters contribute to the behaviour of the system. Below, we will propose an approach to sensitivity analysis which leads to visualising the contribution of each parameter in the reproduction of a target behaviour. This is the profiles method. We will then propose another approach to evaluate a *calibration's robustness, i.e. to know if small variations of the parameters around calibrated values can lead to important changes in the model's behaviour.

    Evolutionary algorithms

    Evolutionary algorithms are optimisation methods which were originally inspired by evolution and natural selection. The general principle is to iteratively generate new populations of individuals from the previous population, as follows:

    1. Generate new individuals by crossover and mutation of the individuals in the previous population,
    2. Evaluate the new individuals,
    3. Select the individuals to keep in the new population.

    From this general framework, we can look for the best solutions to a given problem by selecting from each generation the individuals that are the best at solving it. We can also prioritise diversity by selecting individuals whose behaviours vary most from one another.

    Using evolutionary algorithms with models

    In the context of complex systems modelling, we are evaluating parameter values based on the behaviour they induce in the model. The individuals are thus endowed with a genome which encodes a value for each model parameter. Evaluating an individual means executing a model simulation with the parameter values in the individual's genome and performing desired measures on the model output. The set of values measured constitute what we will call here a pattern. Each simulation thus generates a pattern. When the model is stochastic, we can take the average or median pattern of several simulation replications with the same parameter values. In the end, an individual is comprised of the genome and its associated pattern.

    In order to solve the modelling problems described above, we will use the evolutionary algorithms with different objectives:

    • the objective of looking for patterns which are the closest to a pattern observed or measured experimentally,
    • the objective of looking for different patterns.

    Calibrate a model to reproduce expected patterns

    Corresponding OpenMOLE script: ants_calibrate/ants_calibrate.oms

    Corresponding paper: Schmitt C, Rey-Coyrehourcq S, Reuillon R, Pumain D, 2015, "Half a billion simulations: evolutionary algorithms and distributed computing for calibrating the SimpopLocal geographical model" Environment and Planning B: Planning and Design, 42(2), 300-315.

    We will see now how OpenMOLE can help in finding the parameter values with which a model reproduces a given pattern.

    Coming back to the ants example, we can imagine a real world experiment where three stacks of food are set around the anthill, and the experimenter seeks to measure the amount of time required for each stack to be emptied. Assume that the measurements taken from real data are respectively 250, 400, and 800 seconds. If the model is accurate, it should be able to reproduce these measurements. Are we able to find some parameter values which reproducing these values?

    This question can be understood as an optimisation problem, in which we search for the parameter values which minimise the difference between experimental measured times and simulated times, given by:

    |250 - simuFood1| + |400 - simuFood2| + |800 - simuFood3|

    To answer this question using OpenMOLE, we need a workflow that describes:

    1. how to simulate the model and compute the distance between simulated and experimental measures,
    2. how to minimise this distance,
    3. how to parallelise the computations.

    The first step corresponds to OpenMOLE basics which will not be detailed here. We assume that we have defined a replicateModel task that executes 10 replications of the model with the given parameter values, computes the median distance between the simulation outputs and experimental measures (following the above expression) and associates it with the foodTimesDifference prototype.

    The second step is tackled using the NSGA2 algorithm, a multi-criteria optimisation genetic algorithm implemented in OpenMOLE. It takes the following parameters as inputs:

    • mu: the number of individuals to randomly generate in order to initialise the population,
    • inputs: the set of model parameters and their range of associated values over which the optimisation is done,
    • objectives: a sequence of variables to be minimised,
    • reevaluate: the probability of picking a new individual from the existing population in order to reevaluate it,
    • a termination criterion.

    The corresponding OpenMOLE code is the following:

    val evolution =
        mu = 200,
        genome = Seq(diffusion in (0.0, 99.0), evaporation in 0.0, 99.0)),
        objectives = Seq(foodTimesDifference), //we have a single objective here
        reevaluate = 0.01,
        termination = 1000000

    The variable foodTimesDifference is a prototype in the OpenMOLE workflow, representing the sum of absolute differences between experimental times and simulated times, as given above. As we are dealing with a stochastic model, its value is defined in the workflow as the median on some model replications with the same parameter values. The NSGA2 algorithm will aim to minimise this value.

    The parameter reevaluate is useful when we have a stochastic model. By chance, a simulation or a set of replications can lead to a satisfying but unreproducible result. It is better to keep individuals which produce good average results. If an individual has high fitness, it will have a greater chance of being selected for reevaluation. If its previous performance was due to luck, it will tend to produce less impressive results and the individual will be abandoned in favour of more robust individuals.

    Finally, we must consider how computation is distributed. OpenMOLE offers several approaches to tackle this question for evolutionary algorithms: generational, steady state and island steady state.

    The first approach entails generating λ individuals during each generation and evaluating each of them by distributing their evaluation across the different available computing units. To continue to the next generation, the algorithm must wait for all individuals to be evaluated, which can lead to a significant slow-down as resting computing units wait for the slowest individuals to terminate, in the case of large disparities in computation time among individuals.

    The second approach begins with μ individuals and launches a maximal number of evaluations for as long as there are available computing units. When an evaluation is completed, it is integrated into the population and a new individual is generated and evaluated on the computing unit that has just been freed. This method uses all computing units continuously and is recommended in a cluster environment.

    The third approach, island steady state, is particularly well adapted to grid computing for which access to computational nodes has a consequent entry cost (for example because of the waiting time for a node to be freed). Instead of evaluating individuals across a set of distributed computing units, it relies on launching evolutionary algorithms over a population for a fixed time period (for example 1 hour). When the period of time is over, the final population of the algorithm is integrated into the global population, which allows the system to generate a new population as a basis for a new distributed evolution.

    In our example, we propose to study the simple steady state approach:

    val (puzzle, ga) = SteadyGA(evolution)(replicateModel, 40)

    We pass SteadyGA the evolution method that was described above and the task to be executed. The last parameter corresponds to the number of evaluations to be executed in parallel. SteadyGA launches new evaluations as long as the number of current evaluations is below this value.

    SteadyGA returns two variables called, in our example, puzzle and ga. The second contains information about the current evolution and allows for the creation of hooks to export the current population into a csv file or to print the current generation. The following code saves the population corresponding to each generation into a file results/population#.csv, where # is the number of the generation:

    val savePopulationHook = SavePopulationHook(ga, workDirectory / "results")

    This line of code displays the generation number in the console:

    val display = DisplayHook("Generation ${" + + "}")

    In OpenMOLE, a puzzle is a set of tasks and transitions that describe a part of a workflow. The variable puzzle contains the OpenMOLE puzzle that does the evolution. We use this variable to construct the final puzzle that will be executed and that contains the hooks defined above:

    (puzzle hook savePopulationHook hook display)

    When we launch the OpenMOLE workflow, the evolution will produce sets of parameter values with increasing fitness, i.e. with which the model output comes closest to experimental values. We show the evolution of the distance between simulation and experimental measures between successive evaluations in the following figure:


    When the evolution has stabilised, we can conclude whether we have found parameter values with which the model reproduces experimental data. If so, we can conclude that the model is a possible explanation of the observed phenomenon.

    | diffusion| evaporation| foodDifference| |----------:|------------:|---------------:| | 99.00| 5.37| 53.00| | 45.19| 8.12| 40.50| | 27.84| 8.77| 36.00| | 66.19| 6.74| 56.50| | 99.00| 5.49| 55.50| | 64.42| 5.60| 57.50| | 71.17| 5.61| 15.50| | 68.10| 5.18| 49.00| | 78.39| 5.59| 37.00| | 78.39| 5.57| 57.00| | 59.09| 3.72| 49.00| | 51.71| 7.23| 58.50| | 66.60| 5.26| 52.50| | 21.36| 8.87| 65.50| | 64.42| 5.60| 53.50| | 92.45| 5.30| 58.50| | 47.85| 6.98| 59.00| | 68.10| 5.42| 58.50| | 44.72| 7.09| 60.00| | 79.39| 5.60| 59.50|

    Validation: Putting a model to the test

    Associated OpenMOLE Script: ants_pse/ants_pse.oms

    Associated Article: Chérel G., Cottineau C., Reuillon R., 2015, " Beyond Corroboration: Strengthening Model Validation by Looking for Unexpected Patterns ", PLoS ONE 10(9): e0138212. doi:10.1371/journal.pone.0138212

    As stated above, knowing that a model can reproduce an observed phenomenon does not ensure its validity, that is to say that we can trust it to explain the phenomenon in other experimental conditions and that its predictions are valid with other parameter values. We have already established that one way to test a model is to search for the variety of behaviours it can exhibit. The discovery of unexpected behaviours, if they disagree with the experimental data or the direct observation of the system it represents, provides us with the opportunity to revise the assumptions of the model or to correct bugs in the code. This principle also holds for the absence of expected pattern discovery, which reveals the inability of the model to produce such patterns. As we test a model and as we revise it, we can move toward a model we can trust to explain and predict a phenomenon.

    One might wonder, for instance, if in our ant colony model the closest food source is always exploited before the furthest. Accordingly, we decide to compare the different patterns that the model generates, looking specifically at the amount time the model requires to drain the closest and the furthest food sources.

    As in the previous experiment, we consider a task that runs 10 replications of the model with the same given parameter values and that provides, as its output, the median pattern described in two dimensions by the variables medFood1, the time in which the closest food source was exhausted, and medFood3, the time in which the furthest food source was exhausted.

    To search for diversity, we use the PSE (Pattern Space Exploration) method. As with all evolutionary algorithms, PSE generates new individuals through a combination of genetic inheritance from parent individuals and mutation. PSE (inspired by the novelty search method) selects for the parents whose patterns are rare compared to the rest of the population and to the previous generations. In order to evaluate the rarity of a pattern, PSE discretises the pattern space, dividing this space into cells. Each time a simulation produces a pattern, a counter is incremented in the corresponding cell. PSE preferentially selects the parents whose associated cells have low counters. By selecting parents with rare patterns, we have a better chance to produce new individuals with previously unobserved behaviours.

    In order to use PSE in OpenMOLE, the calibration utilised in the previous section is merely run with a different evolution method. We need to provide the following parameters:

    • inputs: the model parameters with their minimum and maximum bounds,
    • observables: the observables measured for each simulation and within which we search for diversity,
    • gridSize: the discretisation step for each observable,
    • reevaluate and termination have the same meaning as in the calibration example.

    The following is the OpenMOLE code used for our entomological example:

    val evolution =
        BehaviourSearch (
          inputs =
              diffusion -> (0.0, 99.0),
              evaporation -> (0.0, 99.0)),
          observables =
          gridSize = Seq(40, 40),
          reevaluate = 0.01,
          termination = 1000000

    As the exploration progresses, new patterns are discovered. The following figure gives the number of known patterns (the number of cells with a counter value greater than 0) with respect to the number of evaluations.


    When this number stabilises, PSE is no longer making new discoveries. One has to be careful when interpreting this stabilisation. The absence of new discoveries can mean that all the patterns that the model can produce have been discovered, but it is possible that other patterns exist but that PSE could not reach them.

    The following figure shows the set of patterns discovered by PSE when we interrupt the exploration after it stabilises.


    The first observation that can be made is that all patterns have indeed been discovered: in every pattern, the closest food source has been drained before the furthest one. Further, there seem to be minimum and maximum bounds on the time period during which the nearest food source is consumed.

    These observations give us starting points for further reflections on the collective behaviour of the ants. For instance, is the exploration of the closest food source systematic? Could there be ant species that explore further food sources first? If we found such a species, we would have to wonder which mechanisms make it possible and revise the model to take them into account. This illustrates how the discovery of the different behaviours the model is able to produce can lead us to formulate new hypotheses of the system under study, to test them and to revise the model, thus enhancing our understanding of the phenomenon.

    Why not simply sample the parameter space in order to know the different potential behaviours of the model using well known sampling methods such as LHS? In the context of an experiment using a collective motion model with 5 parameters, we compared the performances of PSE and 3 sampling techniques as applied to the parameter space: LHS, Sobol and a regular grid. The results presented in the next two figures show that the sampling of the parameter space, even with good coverage properties such as LHS and Sobol, can miss several patterns. Adaptative methods, such as PSE, that orient the search according to the discoveries made along the way, are preferable. The following figure shows the behaviours discovered by the proposed method (PSE for Pattern Space Exploration), by a LHS sampling, and by a regular grid.

    Each point represents a discovered behaviour of the model. The behaviours are described in two dimensions: the average velocity of the particles and their relative diffusion (towards 1, they move away from each other, at 0, they do not move relatively to each other, towards -1, they get closer to each other).

    The following figure allows for the comparison of PSE with other sampling methods in terms of efficiency.

    Sensitivity analysis: Profiles

    Linked OpenMOLE script: ants_profiles/ants_profiles.oms

    Article: Reuillon R., Schmitt C., De Aldama R., Mouret J.-B., 2015, "A New Method to Evaluate Simulation Models: The Calibration Profile (CP) Algorithm", JASSS : Journal of Artificial Societies and Social Simulation, Vol. 18, Issue 1,

    The method we now present focuses on the impact of the different parameters in order to better understand how they contribute to the model overall. In our Anthills example, we calibrated the model to reproduce a set of notional experimental measurements. We would like to know whether the model can reproduce this pattern for other parameter values. It may be that the model cannot reproduce the experimental measurements if a crucial parameter is set to a value other than the one found by the calibration process. On the other hand, another parameter may prove not to be essential at all; that is, the model may be able to reproduce the experimental measurements whatever its value. To establish the relevancy of our model parameters, we will investigate the parameters' profiles for the model and for the targeted pattern.

    We first establish the profile of the evaporation parameter. Specifically, we would like to know whether the model can reproduce the targeted pattern with different evaporation rates. We divide the parameter interval into nX intervals of the same size, and we apply a genetic algorithm to search for values for other the parameters (the ants model only takes 2 parameters, so that the dispersal parameter is the only one to be varied), which, as was done previously in the calibration, minimise the distance between the measurements produced by the model and the ones observed experimentally. In the calibration case, we kept the best individuals of the population whatever their parameter values. This time, we still keep the best individuals, but we keep at least one individual for each interval division of the profiled parameter (in this case, the evaporation parameter). Then, we repeat the process with the dispersal parameter.

    To set a profile for a given parameter in OpenMOLE, the GenomeProfile evolutionary method is used:

    val evolution =
       GenomeProfile (
         x = 0,
         nX = 20,
         inputs =
              diffusion -> (0.0, 99.0),
              evaporation -> (0.0, 99.0)),
         termination = 100 hours,
         objective = aggregatedFitness,
         reevaluate = 0.01

    The arguments inputs, termination, objective and reevaluate have the same role as in calibration. The argument objective is in this instance not a sequence but a single objective to minimise. The argument x specifies the index of the parameter to be profiled, i.e. its position within the inputs sequence , indexing starting at 0. nX is, as explained before, the size of the discretisation of its range.

    As with any evolutionary method, we need for each profile to create an OpenMOLE puzzle in order to execute it. We define a function which returns the puzzle associated with a given parameter and use it to assemble all of the pieces into a common puzzle, as follows :

    def profile(parameter: Int) = {
        val evolution =
           GenomeProfile (
             x = parameter,
             nX = 20,
             inputs =
                  diffusion -> (0.0, 99.0),
                  evaporation -> (0.0, 99.0)),
             termination = 100 hours,
             objective = aggregatedFitness,
             reevaluate = 0.01
        val (puzzle, ga) = SteadyGA(evolution)(replicateModel, 40)
        val savePopulationHook = SavePopulationHook(ga, workDirectory / ("results/" + parameter.toString))
        val display = DisplayHook("Generation ${" + + "}")
        (puzzle hook savePopulationHook hook display)
    val firstCapsule = Capsule(EmptyTask())
    val profiles = (0 until 2).map(profile) -- _).reduce(_ + _)

    We obtain the following profiles :



    When the diffusion rate is set to any value above 10, the model is able to reproduce experimental measures rather accurately. A refined profile within the interval [0;20] may be useful to give a more precise picture of the change in the influence of the parameter. Model performance is on the contrary strongly sensitive to the evaporation parameter, as values over 10 lead to a strong increase in minimal fit. When running the model with a diffusion rate of 21 and evaporation rate of 15, we observe that the ants are not able to build a sufficiently stable pheromone path between the nest and furthest food pile, which increases the time needed to exploit it in a considerable way.


    Sensitivity analysis: Calibration's robustness

    The last method presented here aims to evaluate the robustness of a model calibration. By a robust calibration, we mean that small variations of optimal parameters do not strongly change model behaviour. In other words, there should be no discontinuity in model indicators in a reasonable region around the optimal point. As a consequence, if parameter values are restricted to given regions of the parameter space, we expect the model to have roughly the same behaviour within each region, especially within the region around the calibrated point.

    Let's suppose, for instance, that we can measure the parameter values directly in the data. Let's also assume that we can establish a confidence interval for each parameter. We want to be sure that, as long as the parameter values remain within their respective intervals, the model maintains the same behaviour. This assumption is important when we try to use the model as a predictive model. If the model produces behaviours which vary greatly within the considered intervals, the parameters responsible for this variation should be found and measured with more accuracy in order to narrow the confidence interval.

    This issue can be tackled using the PSE algorithm again, by running the above example with the desired confidence intervals for each parameter. The algorithm will aim to diversity of outputs within these interval, and the unveiling of significantly different patterns will imply that the model is sensitive to some parameters within the considered region. One must then either narrow parameter bounds again, or stay cautious on conclusions obtained through the calibrated model.


    The methods developed here suggest an approach to complex systems modelling and simulation which focuses on the patterns produced as outputs of simulation. When data on the internal mechanisms of a system or the processes that give rise to an emerging phenomenon are missing (e.g. because they are not directly observable), they can be formulated into algorithmic interpretations (models which can be run in simulation), which serve as candidate explanations of the phenomena. The methods we present here represent a variety of ways to verify whether these explanations can reproduce the phenomena they aim to explain (relative to a set of given objectives), to test their predictive and explicative capabilities, and to analyse the role of each parameter in their dynamic.

    This text by Guillaume Chérel is under a Creative Commons Attribution - Share alike 4.0 International license. To obtain a copy of this license, please visit or send an inquiry to Creative Commons, 444 Castro Street, Suite 900, Mountain View, California, 94041, USA.

    Packaged archive (can be imported in OpenMOLE)
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