最优贝叶斯推理中的重叠矩阵集中

IF 1.4 4区 数学 Q2 MATHEMATICS, APPLIED Information and Inference-A Journal of the Ima Pub Date : 2020-10-01 DOI:10.1093/imaiai/iaaa008
Jean Barbier
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引用次数: 23

摘要

我们考虑具有有限维矢量分量的信号的贝叶斯推理模型。我们证明了在适当的扰动下,这些模型在重叠矩阵集中的意义上是复制对称的。重叠矩阵是这些模型中的阶参数,并且与误差度量(例如最小均方误差)直接相关。我们的证明在最优贝叶斯推理设置中是有效的。这意味着它依赖于这样一个假设,即模型及其所有超参数都是已知的,这样后验分布就可以精确地书写出来。我们的结果适用于高维推理和学习中的重要问题的例子是低秩张量因子分解、教师-学生场景中具有有限数量隐藏神经元的委员会机器神经网络或广义线性模型的多层版本。
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Overlap matrix concentration in optimal Bayesian inference
We consider models of Bayesian inference of signals with vectorial components of finite dimensionality. We show that under a proper perturbation, these models are replica symmetric in the sense that the overlap matrix concentrates. The overlap matrix is the order parameter in these models and is directly related to error metrics such as minimum mean-square errors. Our proof is valid in the optimal Bayesian inference setting. This means that it relies on the assumption that the model and all its hyper-parameters are known so that the posterior distribution can be written exactly. Examples of important problems in high-dimensional inference and learning to which our results apply are low-rank tensor factorization, the committee machine neural network with a finite number of hidden neurons in the teacher–student scenario or multi-layer versions of the generalized linear model.
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来源期刊
CiteScore
3.90
自引率
0.00%
发文量
28
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