Predicting Ordinary Differential Equations with Transformers

Soren Becker, M. Klein, Alexander Neitz, Giambattista Parascandolo, Niki Kilbertus
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引用次数: 3

Abstract

We develop a transformer-based sequence-to-sequence model that recovers scalar ordinary differential equations (ODEs) in symbolic form from irregularly sampled and noisy observations of a single solution trajectory. We demonstrate in extensive empirical evaluations that our model performs better or on par with existing methods in terms of accurate recovery across various settings. Moreover, our method is efficiently scalable: after one-time pretraining on a large set of ODEs, we can infer the governing law of a new observed solution in a few forward passes of the model.
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用变压器预测常微分方程
我们开发了一个基于变压器的序列到序列模型,该模型从单个解轨迹的不规则采样和噪声观测中以符号形式恢复标量常微分方程(ode)。我们在广泛的经验评估中证明,我们的模型在各种环境下的准确采收率方面表现得更好或与现有方法相当。此外,我们的方法具有有效的可扩展性:在对大量ode进行一次性预训练后,我们可以在模型的几次前向传递中推断出新观察到的解的控制律。
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