The algorithm for Monte Carlo simulation of parton-level events based on an Artificial Neural Network (ANN) proposed in arXiv:1810.11509 is used to perform a simulation of $H\to 4\ell$ decay. Improvements in the training algorithm have been implemented to avoid numerical instabilities. The integrated decay width evaluated by the ANN is within 0.7% of the true value and unweighting efficiency of 26% is reached. While the ANN is not automatically bijective between input and output spaces, which can lead to issues with simulation quality, we argue that the training procedure naturally prefers bijective maps, and demonstrate that the trained ANN is bijective to a very good approximation.
翻译:根据ArXiv:1810.10.11509中建议的人工神经网络(ANN)模拟部分水平事件的蒙特卡洛模拟算法被用于模拟“H”至“4”的衰变。已经对培训算法进行了改进以避免数字不稳定性。ANN所评估的综合衰变宽度在实际值的0.7%和26%的不加权效率范围内。虽然ANN不是输入空间和输出空间之间自动的双向分辨,这可能导致模拟质量问题,但我们认为,培训程序自然倾向于双向图,并表明受过训练的ANN具有极好的近似性。