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Retraining Conditions: How Much to Retrain a Network After Pruning?

机译:重新培训条件:修剪后重新培训网络有多少?

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Restoring the desired performance of a pruned model requires a fine-tuning step, which lets the network relearn using the training data, except that the parameters are initialised to the pruned parameters. This relearning procedure is a key component in deciding the time taken in building a hardware-friendly architecture. This paper analyses the fine-tuning or retraining step after pruning the network layer-wise and derives lower bounds for the number of epochs the network will take based on the amount of pruning done. Analyses on the propagation of errors through the layers while pruning layer-wise is also performed and a new parameter named 'Net Deviation' is proposed which can be used to estimate how good a pruning algorithm is. This parameter could be an alternative to 'test accuracy' that is normally used. Net Deviation can be calculated while pruning, using the same data that was used in the pruning procedure. Similar to the test accuracy degradation for different amounts of pruning, the net deviation curves help compare the pruning methods. As an example, a comparison between Random pruning, Weight magnitude based pruning and Clustered pruning is performed on LeNet-300-100 and LeNet-5 architectures using Net Deviation. Results indicate clustered pruning to be a better option than random approach, for higher compression.
机译:恢复修剪模型的期望性能需要一个微调步骤,该步骤允许网络使用训练数据重新学习,除了将参数初始化为修剪参数之外。该重新学习过程是决定构建硬件友好体系结构所花费时间的关键组成部分。本文在对网络进行逐层修剪后分析了微调或再训练步骤,并根据修剪量得出了网络将要使用的时期数的下限。分析错误在各层之间的传播,同时执行逐层修剪,并提出了一个名为“ Net Deviation”的新参数,该参数可用于估计修剪算法的性能。该参数可以替代通常使用的“测试精度”。可以在修剪时使用修剪过程中使用的相同数据来计算“净偏差”。类似于不同修剪量下测试精度的下降,净偏差曲线有助于比较修剪方法。例如,使用Net Deviation在LeNet-300-100和LeNet-5架构上执行了随机修剪,基于权重的修剪和群集修剪之间的比较。结果表明,对于较高的压缩率,群集修剪是比随机方法更好的选择。

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