Cosmological parameters encoding our understanding of the expansion history of the Universe can be constrained by the accurate estimation of time delays arising in gravitationally lensed systems. We propose TD-CARMA, a Bayesian method to estimate cosmological time delays by modelling the observed and irregularly sampled light curves as realizations of a Continuous Auto-Regressive Moving Average (CARMA) process. Our model accounts for heteroskedastic measurement errors and microlensing, an additional source of independent extrinsic long-term variability in the source brightness. The semi-separable structure of the CARMA covariance matrix allows for fast and scalable likelihood computation using Gaussian Process modeling. We obtain a sample from the joint posterior distribution of the model parameters using a nested sampling approach. This allows for ``painless'' Bayesian Computation, dealing with the expected multi-modality of the posterior distribution in a straightforward manner and not requiring the specification of starting values or an initial guess for the time delay, unlike existing methods. In addition, the proposed sampling procedure automatically evaluates the Bayesian evidence, allowing us to perform principled Bayesian model selection. TD-CARMA is parsimonious, and typically includes no more than a dozen unknown parameters. We apply TD-CARMA to six doubly lensed quasars HS 2209+1914, SDSS J1001+5027, SDSS J1206+4332, SDSS J1515+1511, SDSS J1455+1447, SDSS J1349+1227, estimating their time delays as $-21.96 \pm 1.448$, $120.93 \pm 1.015$, $111.51 \pm 1.452$, $210.80 \pm 2.18$, $45.36 \pm 1.93$ and $432.05 \pm 1.950$ respectively. These estimates are consistent with those derived in the relevant literature, but are typically two to four times more precise.
翻译:我们提出TD-CARMA,这是一种巴伊西亚方法,通过模拟观测到的和不定期抽样的光曲线来估计宇宙时间延迟,以此实现连续自动递增平均值(CARMA)进程。我们关于心电图测量错误和微升的模型账户,这是来源光度中独立外向长期变异的另一个来源。CARMA值的半分离结构允许使用Gaussian进程模型来快速和可缩放的可能性计算。我们用嵌入式取样方法从共同的表层分布模型参数中获得样本。这可以让“Bainless' Bayeser Regal-Regress 平均值(CARMA)”12 Bayes Convention(CARMA)计算结果,以简单的方式处理预期的后方分布的多模式。JRIS1, ISM ISl=l+501美元。与现有方法不同,提议的SDMASD=50+SD1, 将SDMA的SDSIM 数据自动地用于SD的SD 。</s>