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A Comparative Study to Deep Learning for Pattern Recognition, By using Online and Batch Learning; Taking Cybersecurity as a case

机译:通过在线和批处理学习对深度学习进行模式识别的比较研究;以网络安全为例

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Many models have been proposed to address deep learning problem. Most deep learning models are influenced by presentation order, complex shapes, architecture configuration and learning instability. This paper provides comparative study to deep learning for pattern recognition. Two types of supervised learning techniques were tested which are used for comparison purpose. They correspond to Batch Gradient Descent and Stochastic Gradient Descent. In order to obtain an accurate results with both methods, we used a re-sampling method based on k-fold cross-validation. Experimental Results show that Stochastic Gradient Descent gives good results in comparison to Batch Gradient Descent. The recognition accuracies are seen to improve significantly when Stochastic Gradient Descent is applied for intrusion detection.
机译:已经提出了许多模型来解决深度学习问题。大多数深度学习模型受表示顺序,复杂形状,架构配置和学习不稳定的影响。本文提供了比较 s 进行深度学习以进行模式识别的研究。测试了两种类型的监督学习技术,用于比较目的。它们对应于“批次梯度下降”和“随机梯度下降”。为了获得两种方法的准确结果,我们使用了基于k倍交叉验证的重采样方法。实验结果表明,与批次梯度下降相比,随机梯度下降具有良好的效果。当将随机梯度下降应用到入侵检测中时,识别精度会显着提高。

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