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A Boo(n) for Evaluating Architecture Performance

机译:Boo(n),用于评估架构性能

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We point out important problems with the common practice of using the best single model performance for comparing deep learning architectures, and we propose a method that corrects these flaws. Each time a model is trained, one gets a different result due to random factors in the training process, which include random parameter initialization and random data shuffling. Reporting the best single model performance does not appropriately address this stochasticity. We propose a normalized expected best-out-of-$n$ performance ($ext{Boo}_n$) as a way to correct these problems.
机译:我们指出了使用最佳单一模型性能来比较深度学习架构的常见做法的重要问题,并提出了一种纠正这些缺陷的方法。每次训练模型时,由于训练过程中的随机因素(包括随机参数初始化和随机数据改组),结果都会有所不同。报告最佳的单个模型性能不能适当地解决这种随机性。我们提出标准化的预期最佳$ n $性能($ text {Boo} _n $),作为纠正这些问题的一种方法。

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