Proceedings of the Genetic and Evolutionary Computation Conference Companion 2019
DOI: 10.1145/3319619.3326815
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Prediction of neural network performance by phenotypic modeling

Abstract: Surrogate models are used to reduce the burden of expensive-toevaluate objective functions in optimization. By creating models which map genomes to objective values, these models can estimate the performance of unknown inputs, and so be used in place of expensive objective functions. Evolutionary techniques such as genetic programming or neuroevolution commonly alter the structure of the genome itself. A lack of consistency in the genotype is a fatal blow to data-driven modeling techniques: interpolation betwe… Show more

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Cited by 5 publications
(4 citation statements)
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References 23 publications
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“…4(c), where for each state, the best agent choosing a specific action is shown. While for the state (4,3) and also for (4,7), we see a correct identification of different ways, (5,5), (4,9), and (5,9) give the wrong idea of correct actions, as the supposedly best-outlined action is surprisingly to run against a wall. This effect of UOS is amplified if all agents are considered.…”
Section: State Importancementioning
confidence: 75%
See 2 more Smart Citations
“…4(c), where for each state, the best agent choosing a specific action is shown. While for the state (4,3) and also for (4,7), we see a correct identification of different ways, (5,5), (4,9), and (5,9) give the wrong idea of correct actions, as the supposedly best-outlined action is surprisingly to run against a wall. This effect of UOS is amplified if all agents are considered.…”
Section: State Importancementioning
confidence: 75%
“…For the comparison between the best agents, many states show no importance, i.e., similar behavior in this set. The maze was designed such that the importance of the DFS fork in (4,3), should be less than the no-DFS fork in (4,7). This is represented by our importance measure, as (4,7) has a twice as high value in Fig.…”
Section: State Importancementioning
confidence: 99%
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“…In contrast, Hagg et al [7] introduce a more flexible method for building a surrogate model that is independent of network topology: rather than describing the neural network architecture, they introduce a phenotypic metric which measures the difference in output between two neural networks given the same input sequence. The difference is used in a Kriging surrogate model.…”
Section: Introductionmentioning
confidence: 99%