Trial-based dominance for comparing both the speed and accuracy of stochastic optimizers with standard non-parametric tests
| Author | Kenneth V., Price |
| Author | Kumar, Abhishek |
| Author | Suganthan, P.N. |
| Available date | 2025-01-19T10:05:06Z |
| Publication Date | 2023 |
| Publication Name | Swarm and Evolutionary Computation |
| Resource | Scopus |
| Identifier | http://dx.doi.org/10.1016/j.swevo.2023.101287 |
| ISSN | 22106502 |
| Abstract | Non-parametric tests can determine the better of two stochastic optimization algorithms when benchmarking results are ordinal-like the final fitness values of multiple trials-but for many benchmarks, a trial can also terminate once it reaches a prespecified target value. In such cases, both the time that a trial takes to reach the target value (or not) and its final fitness value characterize its outcome. This paper describes how trial-based dominance can totally order this two-variable dataset of outcomes so that traditional non-parametric methods can determine the better of two algorithms when one is faster, but less accurate than the other, i.e. when neither algorithm dominates. After describing trial-based dominance, we outline its benefits. We subsequently review other attempts to compare stochastic optimizers, before illustrating our method with the Mann-Whitney U test. Simulations demonstrate that "U-scores" are much more effective than dominance when tasked with identifying the better of two algorithms. We validate U-scores by having them determine the winners of the CEC 2022 competition on single objective, bound-constrained numerical optimization. 2023 |
| Language | en |
| Publisher | Elsevier |
| Subject | Benchmarking Dominance Evolutionary algorithms Mann-Whitney test Numerical optimization Stochastic optimization Two-variable non-parametric tests |
| Type | Article |
| Volume Number | 78 |
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Network & Distributed Systems [143 items ]


