2019
DOI: 10.1007/978-3-030-33778-0_10
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Hyperparameter Importance for Image Classification by Residual Neural Networks

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Cited by 17 publications
(14 citation statements)
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“…Generally, the correlations between budgets are rather high as required for multi-fidelity optimization. As expected, the adjacent budget pairs (12,25) and (25, 50) exhibit a larger correlation than the more distant budget pair (12,50). Table 3 lists the mean correlation across all tasks.…”
Section: Rq3: Correlation Between Budgetssupporting
confidence: 77%
See 2 more Smart Citations
“…Generally, the correlations between budgets are rather high as required for multi-fidelity optimization. As expected, the adjacent budget pairs (12,25) and (25, 50) exhibit a larger correlation than the more distant budget pair (12,50). Table 3 lists the mean correlation across all tasks.…”
Section: Rq3: Correlation Between Budgetssupporting
confidence: 77%
“…Last but not least, several papers address the problem of understanding the characteristics of AutoDL tasks [12], [25]. A typical finding for example is that the design space is over-engineered, leading to very simple optimization tasks where even random search can perform well.…”
Section: Related Workmentioning
confidence: 99%
See 1 more Smart Citation
“…For instance, Probst et al (2019) are specifically interested in binary classification and hence use a subset of the "OpenML-100" with a binary target. Similarly, Sharma et al (2019) are interested in image classification, and therefore define a set of ten image datasets.…”
Section: Establishing Hyperparameter Importance Across Datasetsmentioning
confidence: 99%
“…Hutter et al [2014a] quantified the importance of hyperparameters based on a random forest fitted on data generated by BO, for which the importance of both the main and the interaction effects of hyperparameters was calculated by a functional ANOVA approach. Similarly, Sharma et al [2019] quantified the hyperparameter importance of residual neural networks. These works highlight how useful it is to quantify the importance of hyperparameters.…”
Section: Background and Related Workmentioning
confidence: 99%