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Regularization for Unsupervised Deep Neural Nets

机译:针对无监督的深神经网络的正规化

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摘要

Unsupervised neural networks, such as restricted Boltzmann machines (RBMs) and deep belief networks (DBNs), are powerful tools for feature selection and pattern recognition tasks. We demonstrate that overfitting occurs in such models just as in deep feedforward neural networks, and discuss possible regularization methods to reduce overfitting. We also propose a "partial" approach to improve the efficiency of Dropout/DropConnect in this scenario, and discuss the theoretical justification of these methods from model convergence and likelihood bounds. Finally, we compare the performance of these methods based on their likelihood and classification error rates for various pattern recognition data sets.
机译:无监督的神经网络,例如受限制的Boltzmann机器(RBMS)和深度信仰网络(DBNS)是功能选择和模式识别任务的强大工具。 我们展示了在这种模型中发生的过度装备,就像深馈神经网络一样,并讨论可能的正则化方法以减少过度装备。 我们还提出了一种“部分”方法来提高这种情况下的辍学/丢弃效率,并从模型收敛和似然界讨论这些方法的理论正当化。 最后,我们根据各种模式识别数据集的似然和分类错误率进行比较这些方法的性能。

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