Documents
-
- Download
- 3449726.3463218
- Publisher's Version
-
open access
- Full text at publishers site
In Collections
This item can be found in the following collections:
Is there anisotropy in structural bias?
Structural Bias (SB) is an important type of algorithmic deficiency within iterative optimisation heuristics. However, methods for detecting structural bias have not yet fully matured, and recent studies have uncovered many interesting questions. One of these is the question of how structural bias can be related to anisotropy. Intuitively, an algorithm that is not isotropic would be considered structurally biased. However, there have been cases where algorithms appear to only show SB in some dimensions. As such, we investigate whether these algorithms actually exhibit anisotropy, and how this impacts the detection of SB. We find that anisotropy is very rare, and even in cases where it is present, there are clear tests for SB which do not rely on any assumptions of isotropy, so we can safely expand the suite of SB tests to encompass these kinds of deficiencies not found by the original tests.
We propose several additional testing procedures for SB detection and aim to...
Show moreStructural Bias (SB) is an important type of algorithmic deficiency within iterative optimisation heuristics. However, methods for detecting structural bias have not yet fully matured, and recent studies have uncovered many interesting questions. One of these is the question of how structural bias can be related to anisotropy. Intuitively, an algorithm that is not isotropic would be considered structurally biased. However, there have been cases where algorithms appear to only show SB in some dimensions. As such, we investigate whether these algorithms actually exhibit anisotropy, and how this impacts the detection of SB. We find that anisotropy is very rare, and even in cases where it is present, there are clear tests for SB which do not rely on any assumptions of isotropy, so we can safely expand the suite of SB tests to encompass these kinds of deficiencies not found by the original tests.
We propose several additional testing procedures for SB detection and aim to motivate further research into the creation of a robust portfolio of tests. This is crucial since no single test will be able to work effectively with all types of SB we identify.
Show less- All authors
- Vermetten, D.; Kononova, A.V.; Caraffini, F.; Wang, H.; Bäck, T.H.W.
- Editor(s)
- Krawiec, K.
- Date
- 2021-07-08
- Title of host publication
- Genetic and Evolutionary Computation Conference, Companion Volume
- Pages
- 1243–1250
- ISBN (print)
- 9781450383516
Conference
- Conference
- GECCO '21: Genetic and Evolutionary Computation Conference
- Date
- 2021-07-10 - 2021-07-14
- Location
- Lille, France