变粒子数脏玻色子的监督学习

Pere Mujal, A. Miguel, A. Polls, B. Juli'a-D'iaz, S. Pilati
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引用次数: 6

摘要

利用人工神经网络研究了光学散斑无序中少量相互作用玻色子的监督机器学习。对于不同的粒子数和不同的相互作用强度,学习曲线显示出近似通用的幂律缩放。我们引入了一种网络架构,可以在包含不同粒子数的异构数据集上进行训练和测试。该网络提供了对训练集中包含的系统大小的准确预测,以及对(计算上具有挑战性的)更大大小的公平外推。值得注意的是,实现了一种新的迁移学习策略,通过在训练集中包含许多小型实例,大大加快了大型系统的学习。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Supervised learning of few dirty bosons with variable particle number
We investigate the supervised machine learning of few interacting bosons in optical speckle disorder via artificial neural networks. The learning curve shows an approximately universal power-law scaling for different particle numbers and for different interaction strengths. We introduce a network architecture that can be trained and tested on heterogeneous datasets including different particle numbers. This network provides accurate predictions for the system sizes included in the training set, and also fair extrapolations to (computationally challenging) larger sizes. Notably, a novel transfer-learning strategy is implemented, whereby the learning of the larger systems is substantially accelerated by including in the training set many small-size instances.
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