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Declarative Modeling and Bayesian Inference of Dark Matter Halos

机译:暗物质晕轮的声明性建模和贝叶斯推断

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Probabilistic programming allows specification of probabilistic models in a declarative manner. Recently, several new software systems and languages for probabilistic programming have been developed in the on the basis of newly developed and improved methods for approximate inference in probabilistic models. In this contribution a probabilistic model for an idealized dark matter localization problem is described. We first derive the probabilistic model for the inference of dark matter locations and masses, and then show how this model can be implemented using BUGS and Infer.NET, two software systems for probabilistic programming. Finally, the different capabilities of both systems are discussed. The presented dark matter model includes mainly non-conjugate factors, thus, it is difficult to implement this model with Infer.NET.
机译:概率编程允许以声明的方式指定概率模型。最近,在概率模型的近似推论的新开发和改进方法的基础上,已经开发了几种用于概率编程的新软件系统和语言。在这一贡献中,描述了理想化暗物质定位问题的概率模型。我们首先导出用于推断暗物质位置和质量的概率模型,然后说明如何使用BUGS和Infer.NET这两个用于概率编程的软件系统来实现该模型。最后,讨论了两个系统的不同功能。提出的暗物质模型主要包括非共轭因子,因此,很难使用Infer.NET来实现该模型。

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