使用小型数据集处理方法优化神经网络性能

Jingliang Chen Jingliang Chen, Chenchen Wu Jingliang Chen, Shuisheng Chen Chenchen Wu, Yi Zhu Shuisheng Chen, Bin Li Yi Zhu
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引用次数: 0

摘要

在网络模型和算法等传统方法高度开源、与硬件高度绑定的情况下,数据处理成为优化神经网络性能的重要方法。本文结合传统的数据处理方法,提出了一种基于小数据集的方法,即在训练过程中严格随机划分小数据集,并以交叉熵损失函数的计算结果为衡量标准,通过对小数据集的比较、筛选、处理来优化深度神经网络。利用这种方法,每次迭代训练都能得到相对最优的结果,并综合每次的优化效果,对每个epoch的结果进行优化。最后,为了验证这种数据处理方法的有效性和适用性,我们在 MNIST、HAGRID 和 CIFAR-10 数据集上进行了实验,比较了在不同超参数下使用这种方法和不使用这种方法的效果,最终验证了这种数据处理方法的有效性。最后,我们总结了该方法的优点和局限性,并展望了该方法未来的改进方向。
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Optimize the Performance of the Neural Network by using a Mini Dataset Processing Method
In the case of traditional methods such as network models and algorithms are highly open source and highly bound to hardware, data processing has become an important method to optimize the performance of neural networks. In this paper, we combine traditional data processing methods and propose a method based on the mini dataset which is strictly randomly divided within the training process; and takes the calculation results of the cross-entropy loss function as the measurement standard, by comparing the mini dataset, screening, and processing to optimize the deep neural network. Using this method, each iteration training can obtain a relatively optimal result, and the optimization effects of each time are integrated to optimize the results of each epoch. Finally, in order to verify the effectiveness and applicability of this data processing method, experiments are carried out on MNIST, HAGRID, and CIFAR-10 datasets to compare the effects of using this method and not using this method under different hyper-parameters, and finally, the effectiveness of this data processing method is verified. Finally, we summarize the advantages and limitations of this method and look forward to the future improvement direction of this method.
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