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A universal neural network representation for hadron-hadron interactions at high energy

机译:高能强子-强子相互作用的通用神经网络表示

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An efficient neural network (NN) has been designed to simulate the hadron-hadron interaction at high energy. Two cases have been considered simultaneously, the proton-proton (p-p) and the pion-proton (pi-p) interactions. The neural network has been trained to produce the charged multiplicity distribution for both cases based on samples from the overlapping functions. The trained NN shows a good performance in matching the trained distributions. The NN is then used to predict the distributions that are not present in the training set and matched them effectively. The robustness of the designed NN in the presence of uncertainties, in the overlapping functions has been demonstrated. [References: 33]
机译:设计了一种有效的神经网络(NN),以模拟高能下的强子-强子相互作用。同时考虑了两种情况,质子-质子(p-p)和介子-质子(pi-p)相互作用。神经网络已经过训练,可以根据重叠函数中的样本为两种情况生成带电多重分布。经过训练的NN在匹配经过训练的分布方面显示出良好的性能。然后使用NN来预测训练集中不存在的分布,并对其进行有效匹配。已经证明了在重叠函数存在不确定性的情况下,所设计的神经网络的鲁棒性。 [参考:33]

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