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Sequential Monte Carlo samplers for marginal likelihood computation in multiplicative exponential noise models

机译:乘法蒙特卡罗采样器用于乘法指数噪声模型中的边际似然计算

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Model scoring in latent factor models is essential for a broad spectrum of applications such as clustering, change point detection or model order estimation. In a Bayesian setting, model selection is achieved via computation of the marginal likelihood. However, this is a typically challenging task as it involves calculation of a multidimensional integral over all the latent variables. In this paper, we consider approximate computation of the conditional marginal likelihood in a multiplicative exponential noise model, which is the generative model for latent factor models with the Itakura-Saito divergence such as the Nonnegative Matrix Factorization (NMF). We show that standard approaches are not accurate and propose two new methods in the sequential Monte Carlo (SMC) samplers framework. We explore the performances of these estimators on two problems.
机译:潜在因子模型的模型评分对于广泛的应用是必不可少的,例如聚类,改变点检测或模型顺序估计。在贝叶斯环境中,通过计算边际可能性来实现模型选择。然而,这是一个通常具有挑战性的任务,因为它涉及在所有潜在变量上计算多维积分。在本文中,我们考虑了乘法指数噪声模型中的条件边缘似然性的近似计算,这是潜在因子模型的生成模型,其具有itakura-saito发散,例如非负矩阵分解(NMF)。我们表明,标准方法不准确,并提出了连续蒙特卡罗(SMC)采样器框架中的两种新方法。我们探讨了这些估算器的表现对两个问题。

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