首页> 外文会议>International conference on neural information processing;ICONIP'96 >Comparing Adaptive and Non-Adaptive Connection Pruning With Pure Early Stopping
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Comparing Adaptive and Non-Adaptive Connection Pruning With Pure Early Stopping

机译:将自适应和非自适应连接修剪与纯早期停止进行比较

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Neural network pruning methods on the level of individual network parameters (e.g. connection weights) can improve generalization, as is shown in this empirical study. However, an open problem in the puning methods known today (OBD, OBS, autoprune, epsiprune) is the selection of the number of parameters to be removed in each pruning step (pruning strength). This work presents a pruning method lprune that automatically adapts the pruning strength to the evolution of weights and loss of generalization during training. The method requries no algorithm parameter adjustment by th euser. Results of statistical given, based on extensive experimentation with 14 different problems. The results indicate that training with pruning without pruning. Furthermore, lprune is often superior to autoprune (which is superior to OBD) on diagnosis tasks unless severe pruning early in the training process is required.
机译:如本实证研究所示,在单个网络参数(例如连接权重)级别上的神经网络修剪方法可以提高泛化性。然而,当今已知的打孔方法(OBD,OBS,autoprune,epsiprune)中的一个开放问题是在每个修剪步骤中要删除的参数数量(修剪强度)的选择。这项工作提出了一种修剪方法lprune,该修剪方法可以自动将修剪强度适应训练过程中权重的演变和泛化的损失。该方法不需要用户修改算法参数。根据对14个不同问题的广泛实验,得出了统计结果。结果表明,修剪时不修剪即可进行训练。此外,在诊断任务上,lprune通常优于autoprune(后者优于OBD),除非在训练过程的早期需要进行严重修剪。

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