cisat 0.1.1

Cognitively-Inspired Simulated Annealing Teams
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About

This is an implementation of the Cognitively-Inspired Simulated Annealing Teams (CISAT) Framework in Rust.

NOTE: This is currently an incomplete implementation.

Usage

Here is a basic examples of usage

fn main() {
    let mut x = cisat::Team::<cisat::problems::Ackley>::new(cisat::Parameters {
        number_of_teams: 1,
        number_of_agents: 10,
        number_of_iterations: 1000,
        temperature_schedule: cisat::TemperatureSchedule::Cauchy {
            initial_temperature: 10.0,
        },
        operational_learning: cisat::OperationalLearning::None,
        self_bias: 0.0,
        quality_bias: 0.0,
        satisficing_fraction: 0.0,
        communication: cisat::CommunicationStyle::None,
    });

    x.solve();

    println!("{}", x);
}

Literature

  1. McComb, C., Cagan, J., & Kotovsky, K. (2015). Lifting the Veil: Drawing insights about design teams from a cognitively-inspired computational model. Design Studies, 40, 119-142. doi:10.1016/j.destud.2015.06.005.
  2. McComb, C., Cagan, J., & Kotovsky, K. (2017). Capturing human sequence-learning abilities in configuration design tasks through markov chains. Journal of Mechanical Design, 139(9). doi:10.1115/1.4037185.
  3. McComb, C., Cagan, J., & Kotovsky, K. (2017). Optimizing design teams based on problem properties: computational team simulations and an applied empirical test. Journal of Mechanical Design, 139(4). doi:10.1115/1.4035793.