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Hyper-efficient model-independent Bayesian method for the analysis of pulsar timing data

机译:用于分析脉冲星定时数据的超高效模型独立贝叶斯方法

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摘要

A new model-independent method is presented for the analysis of pulsar timing data and the estimation of the spectral properties of an isotropic gravitational wave background (GWB). Taking a Bayesian approach, we show that by rephrasing the likelihood we are able to eliminate the most costly aspects of computation normally associated with this type of data analysis. When applied to the International Pulsar Timing Array Mock Data Challenge data sets this results in speedups of approximately 2–3 orders of magnitude compared to established methods, in the most extreme cases reducing the run time from several hours on the high performance computer ‘‘DARWIN’’ to less than a minute on a normal work station. Because of the versatility of this approach, we present three applications of the new likelihood. In the low signal-to-noise regime we sample directly from the power spectrum coefficients of the GWB signal realization. In the high signal-to-noise regime, where the data can support a large number of coefficients, we sample from the joint probability density of the power spectrum coefficients for the individual pulsars and the GWB signal realization using a ‘‘guided Hamiltonian sampler’’ to sample efficiently from this high-dimensional (1000) space. Critically in both these cases we need make no assumptions about the form of the power spectrum of the GWB, or the individual pulsars. Finally, we show that, if desired, a power-law model can still be fitted during sampling. We then apply this method to a more complex data set designed to represent better a future International Pulsar Timing Array or European Pulsar Timing Array data release. We show that even in challenging cases where the data features large jumps of the order 5 years, with observations spanning between 4 and 18 years for different pulsars and including steep red noise processes we are able to parametrize the underlying GWB signal correctly. Finally we present a method for characterizing the spatial correlation between pulsars on the sky, making no assumptions about the form of that correlation, and therefore providing the only truly general Bayesian method of confirming a GWB detection from pulsar timing data.
机译:提出了一种与模型无关的新方法,用于分析脉冲星定时数据和估计各向同性重力波背景(GWB)的光谱特性。采用贝叶斯方法,我们表明通过改写可能性,我们可以消除通常与这种数据分析类型相关的计算最昂贵的方面。当应用于国际脉冲星计时阵列模拟数据挑战数据集时,与已建立的方法相比,可将速度提高大约2-3个数量级,在最极端的情况下,可将高性能计算机DARWIN的运行时间减少数小时到在普通工作站上不到一分钟。由于这种方法的多功能性,我们介绍了新可能性的三种应用。在低信噪比的情况下,我们直接从GWB信号实现的功率谱系数中采样。在高信噪比的情况下,数据可以支持大量系数,我们使用“指导的哈密顿量采样器”从各个脉冲星功率谱系数的联合概率密度和GWB信号实现中采样可以从这个高维度(1000)空间有效采样。至关重要的是,在这两种情况下,我们都无需假设GWB或单个脉冲星的功率谱形式。最后,我们表明,如果需要,在采样过程中仍然可以拟合幂律模型。然后,我们将此方法应用于更复杂的数据集,以更好地表示未来的国际脉冲星定时阵列或欧洲脉冲星定时阵列数据发布。我们表明,即使在具有挑战性的情况下,数据具有5年量级的大跳变,对不同脉冲星的观测跨度在4到18年之间,包括陡峭的红色噪声过程,我们也能够正确地对潜在的GWB信号进行参数设置。最后,我们提出了一种表征天空中脉冲星之间空间相关性的方法,不对这种相关性的形式做出任何假设,因此提供了唯一真正通用的从脉冲星定时数据确认GWB检测的贝叶斯方法。

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