The modeling of binary microlensing light curves via the standard sampling-based method can be challenging, because of the time-consuming light curve computation and the pathological likelihood landscape in the high-dimensional parameter space. In this work, we present MAGIC, which is a machine learning framework to efficiently and accurately infer the microlensing parameters of binary events with realistic data quality. In MAGIC, binary microlensing parameters are divided into two groups and inferred separately with different neural networks. The key feature of MAGIC is the introduction of neural controlled differential equation, which provides the capability to handle light curves with irregular sampling and large data gaps. Based on simulated light curves, we show that MAGIC can achieve fractional uncertainties of a few percent on the binary mass ratio and separation. We also test MAGIC on a real microlensing event. MAGIC is able to locate the degenerate solutions even when large data gaps are introduced. As irregular samplings are common in astronomical surveys, our method also has implications to other studies that involve time series.
翻译:通过标准的取样方法对二进制微粒光曲线进行建模可能具有挑战性,因为光线曲线计算耗时,高维参数空间的病理概率景观也耗时,因此,通过标准取样法对二进制微粒光曲线进行建模。在这项工作中,我们介绍了MAGIC,这是一个机器学习框架,可以高效和准确地推算具有现实数据质量的二进制事件微粒排放参数。在MAGIC, 二进制微吸收参数分为两组,与不同的神经网络分别推断。MAGIC的主要特征是引入神经控制差异方程式,提供处理光线曲线的能力,不规则取样和大数据差距。在模拟光谱曲线的基础上,我们显示MAGIC能够在二进制质量比率和分离中达到几个百分点的分数不确定性。我们还在实际微粒化事件上测试MAGIC。即使在引入了大数据差距时,也能够找到退化的解决方案。在天文调查中常见的不规则抽样,因此我们的方法也会影响到涉及时间序列的其他研究。