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Properties and Bayesian fitting of restricted Boltzmann machines

机译:受限制的Boltzmann机器的性质和贝叶斯拟合

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A restricted Boltzmann machine (RBM) is an undirected graphical model constructed for discrete or continuous random variables, with two layers, one hidden and one visible, and no conditional dependency within a layer. In recent years, RBMs have risen to prominence due to their connection to deep learning. By treating a hidden layer of one RBM as the visible layer in a second RBM, a deep architecture can be created. RBMs thereby are thought to have the ability to encode very complex and rich structures in data, making them attractive for supervised learning. However, the generative behavior of RBMs largely is unexplored and typical fitting methodology does not easily allow for uncertainty quantification in addition to point estimates. In this paper, we discuss the relationship between RBM parameter specification in the binary case and model properties such as degeneracy, instability and uninterpretability. We also describe the associated difficulties that can arise with likelihood‐based inference and further discuss the potential Bayes fitting of such (highly flexible) models, especially as Gibbs sampling (quasi‐Bayes) methods often are advocated for the RBM model structure.
机译:受限制的Boltzmann机器(RBM)是为离散或连续随机变量构建的无向图形模型,具有两层,一个隐藏和一个可见,并且在图层内没有条件依赖性。近年来,由于他们与深度学习的联系,RBMS已经突出。通过将一个RBM的隐藏层视为第二RBM中的可见层,可以创建深度架构。因此,RBMS被认为有能力在数据中编码非常复杂和丰富的结构,使它们对监督学习具有吸引力。然而,RBMS的生成行为主要是未探测和典型的拟合方法,除了点估计之外,还不容易允许不确定量化。在本文中,我们讨论了二进制案例中RBM参数规范与模型属性之间的关系,例如退化,不稳定性和解识别性。我们还描述了基于可能性的推理,并且进一步讨论了这种(高度灵活的)模型的潜在贝叶斯的相关困难,特别是因为吉布斯采样(准贝叶斯)方法通常被提倡RBM模型结构。

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