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BIAS toolbox: Structural bias detection for continuous optimization algorithms

Project description

Deep-BIAS: Bias In Algorithms, Structural

A toolbox for detecting structural bias in continuous optimization heuristics.

With a deep-learning extension to better evaluate the type of bias and gain insights using explainable AI

Setup

This package requires an R-installation to be present.

The R packages will be installed automatically upon first importing BIAS.

Install the BIAS toolbox using pip:

pip install struct-bias

This installs the following R packages:

  • PoweR
  • AutoSEARCH
  • nortest
  • data.table
  • goftest
  • ddst

Detailed setup using virtual env

  1. Download and install R from https://cran.r-project.org/
  2. Download this repository (clone or as zip)
  3. Create a python virtual env python -m venv env
  4. Activate the env (in powershell for example: env/Scripts/Activate.ps1 )
  5. Install dependencies pip install -r requirements.txt
  6. Checkout the example.py to start using the BIAS toolbox.

Example

#example of using the BIAS toolbox to test a DE algorithm

from scipy.optimize import differential_evolution
import numpy as np
from BIAS import BIAS, f0

bounds = [(0,1), (0, 1), (0, 1), (0, 1), (0, 1)]

#do 30 independent runs (5 dimensions)
samples = []
print("Performing optimization method 30 times of f0.")
for i in np.arange(30):
    result = differential_evolution(f0, bounds, maxiter=100)
    samples.append(result.x)

samples = np.array(samples)

test = BIAS()
print(test.predict(samples, show_figure=True))

y, preds = test.predict_deep(samples)
test.explain(samples, preds, filename="explanation.png")

Additional files

Note: The code for generating the RF used to predict the type of bias is included, but the full RF is not. These can be found on zenodo: https://doi.org/10.6084/m9.figshare.16546041. The RF models will be downloaded automatically the first time the predict function requires them.

Citation

If you use the BIAS toolbox in a scientific publication, we would appreciate using the following citations:

@ARTICLE{9828803,
  author={Vermetten, Diederick and van Stein, Bas and Caraffini, Fabio and Minku, Leandro L. and Kononova, Anna V.},
  journal={IEEE Transactions on Evolutionary Computation}, 
  title={BIAS: A Toolbox for Benchmarking Structural Bias in the Continuous Domain}, 
  year={2022},
  volume={26},
  number={6},
  pages={1380-1393},
  doi={10.1109/TEVC.2022.3189848}
}

@software{niki_van_stein_2023_7803623,
  author       = {Niki van Stein and
                  Diederick Vermetten},
  title        = {Basvanstein/BIAS: v1.1 Deep-BIAS Toolbox},
  month        = apr,
  year         = 2023,
  publisher    = {Zenodo},
  version      = {v1.1},
  doi          = {10.5281/zenodo.7803623},
  url          = {https://doi.org/10.5281/zenodo.7803623}
}

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