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Regularization
Actualizado 13 nov 2019
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李纪
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Low-rank decomposition
By
李纪
7 abr 2020
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176
Eventos
稀疏表示, 特征选择(feature selection)机制。 Regression Shrinkage and Selection via the Lasso Robert Tibshirani 1996
作为约束的范数惩罚 Improving neural networks by preventing co-adaptation of feature detectors. Hinton, G. E 2012
作为约束的范数惩罚 Rank, trace-norm and max-norm. Srebro, N. 2005
数据集增强 (将噪声注入权重) An analysis of noise in recurrent neural networks: convergence and generalization. Jim, K.-C., Giles, C. L., and Horne, B. G. 1996
数据集增强 (将噪声注入权重) Practical variational inference for neural networks. Graves, A. 2011
半监督学习 Semi-Supervised Learning. Chapelle, O., Schölkopf, B., and Zien, A. 2006
数据集增强 (注入噪声) Turing computability with neural nets. Siegelmann, H. and Sontag, E. 1991
数据集增强 (注入噪声) Deep networks for robust visual recognition. Tang, Y. and Eliasmith, C. 2010
数据集增强 (注入噪声) Extracting and composingrobust features with denoising autoencoders. Vincent, P., Larochelle, H., Bengio, Y., and Manzagol, P.-A. 2008
数据集增强 (注入噪声) Analyzing noise in autoencoders and deep networks. Poole, B., Sohl-Dickstein, J., and Ganguli, S. 2014
数据集增强 (注入噪声) Regularization and complexity control in feed-forward networks Bishop, C. M. 1995
数据集增强 (注入噪声) Training with noise is equivalent to Tikhonov regularization. Bishop, C. M. 1995
多任务学习 Multitask connectionist learning. Caruana, R. (1993).
多任务学习 Learning internal representations Baxter, J. (1995).
参数绑定和参数共享 Principled hybrids of generative and discriminative models. Lasserre, J. A., Bishop, C. M., and Minka, T. P. (2006).
Bagging 等集成方法 Bagging predictors. Breiman, L. (1994).
Dropout Dropout: A simple way to prevent neural networks from overfitting. Srivastava, N., Hinton, G., Krizhevsky, A., Sutskever, I., and Salakhutdinov, R 2014
生成对抗网络 Explaining and harnessing adversarial examples Goodfellow, I. J., Shlens, J., and Szegedy, C. (2014b).
对抗网络(半监督学习方法) Distributional smoothing with virtual adversarial training Miyato, T., Maeda, S., Koyama, M., Nakae, K., and Ishii, S. (2015).
针对推导迁移学习的正则化 使用论文里提出的 L2-SP 代替 L2 惩罚 A baseline regularization scheme for transfer learning with convolutional neural networks Xuhong Li, Yves Grandvalet, Franck Davoine 2019.9
Períodos
半监督学习的 time span
提前终止(Early Stopping)这个方法一直在用
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