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Variational Learning in Graphical Models and Neural Networks

机译:图形模型和神经网络中的变分学习

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Variational methods are becoming increasingly popular for inference and learning in probabilistic models. By providing bounds on quantities of interest, they offer a more controlled approximation framework than techniques such as Laplace's method, while avoiding the mixing and convergence issues of Markov chain Monte Carlo methods, or the possible computational intractability of exact algorithms. In this paper we review the underlying framework of variational methods and discuss example applications involving sigmoid belief networks, Boltzmann machines and feed-forward neural networks.
机译:在概率模型中推断和学习变分方法越来越受欢迎。通过提供利益量的限制,它们提供比Laplace的方法等技术更受控近似框架,同时避免Markov链蒙特卡罗方法的混合和收敛性问题,或者精确算法的可能计算难易性。在本文中,我们审查了变分方法的基本框架,并讨论了涉及符合赛族信念网络,Boltzmann机器和前锋神经网络的示例应用。

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