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Efficient Hyperparameter Optimization in Convolutional Neural Networks by Learning Curves Prediction

机译:基于学习曲线预测的卷积神经网络高效超参数优化

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In this work, we present an automatic framework for hyperparameter selection in Convolutional Neural Networks. In order to achieve fast evaluation of several hyperparameter combinations, prediction of learning curves using non-parametric regression models is applied. Considering that "trend" is the most important feature in any learning curve, our prediction method is focused on trend detection. Results show that our forecasting method is able to catch a complete behavior of future iterations in the learning process.
机译:在这项工作中,我们提出了卷积神经网络中用于超参数选择的自动框架。为了实现几种超参数组合的快速评估,应用了使用非参数回归模型的学习曲线预测。考虑到“趋势”是任何学习曲线中最重要的特征,因此我们的预测方法专注于趋势检测。结果表明,我们的预测方法能够捕获学习过程中未来迭代的完整行为。

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