论文标题

机器学习了解打结的聚合物

Machine learning understands knotted polymers

论文作者

Braghetto, Anna, Kundu, Sumanta, Baiesi, Marco, Orlandini, Enzo

论文摘要

限制在球形腔内的柔性打结环的模拟配置被馈入旨在区分结类型的长期任期内存神经网络(LSTM NNS)。结果表明,即使对柔性,强限制并因此高度几何纠缠的环进行了测试,它们在结识别方面的表现也很好。与期望结在密集聚合物中定位的期望相符,当将结的识别应用于环比训练的时间长得多得多时,对配置的合适的粗粒程序可以提高LSTMS的性能。值得注意的是,当NN失败时,通常错误的预测仍然属于正确的拓扑家族。 LSTM能够掌握环拓扑的某些基本特性的事实通过对未用于训练的结类型的测试来证实。我们还表明,NN体系结构的选择很重要:更简单的卷积NN表现不佳。最后,所有结果都取决于用于输入的功能:令人惊讶的是,即使在旋转下不变(而结是不变的),配置的坐标或粘结方向也为NNS提供了最佳精度。我们测试的其他旋转不变特征基于距离,角度和二面角。

Simulated configurations of flexible knotted rings confined inside a spherical cavity are fed into long-short term memory neural networks (LSTM NNs) designed to distinguish knot types. The results show that they perform well in knot recognition even if tested against flexible, strongly confined and therefore highly geometrically entangled rings. In agreement with the expectation that knots are delocalized in dense polymers, a suitable coarse-graining procedure on configurations boosts the performance of the LSTMs when knot identification is applied to rings much longer than those used for training. Notably, when the NNs fail, usually the wrong prediction still belongs to the same topological family of the correct one. The fact that the LSTMs are able to grasp some basic properties of the ring's topology is corroborated by a test on knot types not used for training. We also show that the choice of the NN architecture is important: simpler convolutional NNs do not perform so well. Finally, all results depend on the features used for input: surprisingly, coordinates or bond directions of the configurations provide the best accuracy to the NNs, even if they are not invariant under rotations (while the knot type is invariant). Other rotational invariant features we tested are based on distances, angles, and dihedral angles.

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