数学系Seminar第1682期 神经网络训练

创建时间:  2018/07/12  龚惠英   浏览次数:   返回

报告主题:神经网络训练
报告人:Lu Zhiqin  教授 (University of California,Irvine)
报告时间:2018年7月18日(周三)10:00
报告地点:校本部G507
邀请人:胡召平
主办部门:太阳成集团tyc33455数学系
报告摘要:In this talk, we shall give a mathematical setting of the Random Backpropogation  (RBP) method in unsupervised machine learning. When there is no hidden layer in the neural network, the method degenerates to the usual least square method. When there are multiple hidden layers, we can formulate the learning procedure as a system of nonlinear ODEs. We proved the short time, long time existences as well as the convergence of the system of nonlinear ODEs when there is only one hidden layer. This is joint work with Pierre Baldi in Neural Networks 33 (2012) 136-147, and with Pierre Baldi, Peter Sadowski in Neural Networks 95 (2017) 110-133 and in Artificial Intelligence 260 (2018), 1-35.

欢迎教师、员工参加 !

上一条:数学系Seminar第1683期 Nullity 2 extended affine Lie algebras

下一条:数学系Seminar第1679期 二维带部分耗散的Boussinesq方程的稳定性和正则性结果


数学系Seminar第1682期 神经网络训练

创建时间:  2018/07/12  龚惠英   浏览次数:   返回

报告主题:神经网络训练
报告人:Lu Zhiqin  教授 (University of California,Irvine)
报告时间:2018年7月18日(周三)10:00
报告地点:校本部G507
邀请人:胡召平
主办部门:太阳成集团tyc33455数学系
报告摘要:In this talk, we shall give a mathematical setting of the Random Backpropogation  (RBP) method in unsupervised machine learning. When there is no hidden layer in the neural network, the method degenerates to the usual least square method. When there are multiple hidden layers, we can formulate the learning procedure as a system of nonlinear ODEs. We proved the short time, long time existences as well as the convergence of the system of nonlinear ODEs when there is only one hidden layer. This is joint work with Pierre Baldi in Neural Networks 33 (2012) 136-147, and with Pierre Baldi, Peter Sadowski in Neural Networks 95 (2017) 110-133 and in Artificial Intelligence 260 (2018), 1-35.

欢迎教师、员工参加 !

上一条:数学系Seminar第1683期 Nullity 2 extended affine Lie algebras

下一条:数学系Seminar第1679期 二维带部分耗散的Boussinesq方程的稳定性和正则性结果