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Pruning algorithms of neural networks — a comparative study

机译:神经网络的修剪算法—比较研究

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The neural network with optimal architecture speeds up the learning process and generalizes the problem well for further knowledge extraction. As a result researchers have developed various techniques for pruning the neural networks. This paper provides a survey of existing pruning techniques that optimize the architecture of neural networks and discusses their advantages and limitations. Also the paper evaluates the effectiveness of various pruning techniques by comparing the performance of some traditional and recent pruning algorithms based on sensitivity analysis, mutual information and significance on four real datasets namely Iris, Wisconsin breast cancer, Hepatitis Domain and Pima Indian Diabetes.
机译:具有最佳架构的神经网络可加快学习过程,并很好地概括了该问题,可用于进一步的知识提取。结果,研究人员开发了各种修剪神经网络的技术。本文提供了对现有修剪技术的调查,这些修剪技术优化了神经网络的架构,并讨论了它们的优点和局限性。本文还通过基于敏感性分析,互信息和对四个真实数据集(虹膜,威斯康星州乳腺癌,肝炎域和皮马印第安人糖尿病)的敏感度分析,互信息和显着性进行比较,比较了各种修剪技术的效果,从而评估了各种修剪技术的有效性。

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