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pyblocxs: Bayesian Low-Counts X-ray Spectral Analysis in Sherpa

机译:Pyblocxs:贝叶斯低计数夏季X射线谱分析

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Typical X-ray spectra have low counts and should be modeled using the Poisson distribution. However, χ2 statistic is often applied as an alternative and the data are assumed to follow the Gaussian distribution. A variety of weights to the statistic or a binning of the data is performed to overcome the low counts issues. However, such modifications introduce biases or/and a loss of information. Standard modeling packages such as XSPEC and Sherpa provide the Poisson likelihood and allow computation of rudimentary MCMC chains, but so far do not allow for setting a full Bayesian model. We have implemented a sophisticated Bayesian MCMC-based algorithm to carry out spectral fitting of low counts sources in the Sherpa environment. The code is a Python extension to Sherpa and allows to fit a predefined Sherpa model to high-energy X-ray spectral data and other generic data. We present the algorithm and discuss several issues related to the implementation, including flexible definition of priors and allowing for variations in the calibration information.
机译:典型的X射线光谱具有低计数,并且应使用泊松分布进行建模。然而,χ2统计通常用作替代方案,并且假设数据遵循高斯分布。进行各种权重或数据的分箱,以克服低计数问题。然而,这种修改引入偏差或/和信息丢失。 Xspec和Sherpa等标准建模包提供了泊松可能性并允许计算基本的MCMC链,但到目前为止不允许设置完整的贝叶斯模型。我们已经实施了一种复杂的贝叶斯MCMC的算法,用于在夏季环境中进行低计数源的光谱拟合。代码是对SHERPA的Python扩展,并允许将预定义的Sherpa模型拟合到高能X射线谱数据和其他通用数据。我们展示了算法并讨论了与实现相关的几个问题,包括灵活的前瞻定义并允许校准信息中的变体。

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