Reconstructing spectral functions from propagator data is difficult as solving the analytic continuation problem or applying an inverse integral transformation are ill-conditioned problems. Recent work has proposed using neural networks to solve this problem and has shown promising results, either matching or improving upon the performance of other methods. We generalize this approach by not only reconstructing spectral functions, but also (possible) pairs of complex poles or an infrared (IR) cutoff. We train our network on physically motivated toy functions, examine the reconstruction accuracy and check its robustness to noise. Encouraging results are found on both toy functions and genuine lattice QCD data for the gluon propagator, suggesting that this approach may lead to significant improvements over current state-of-the-art methods.
翻译:最近的工作提议使用神经网络来解决这个问题,并显示出有希望的结果,或与其他方法的性能相匹配或改进。我们不仅通过重建光谱功能,而且通过(可能)复式极或红外线截断来推广这一方法。我们用物理动机的玩具功能来培训我们的网络,检查重建的准确性,检查其对噪音的稳健性。在玩具功能和葡萄球推进器的真正的拉蒂斯 QCD 数据上都发现了令人鼓舞的结果,这表明这一方法可能会大大改进目前最先进的方法。