Closed-form differential equations, including partial differential equations and higher-order ordinary differential equations, are one of the most important tools used by scientists to model and better understand natural phenomena. Discovering these equations directly from data is challenging because it requires modeling relationships between various derivatives that are not observed in the data (equation-data mismatch) and it involves searching across a huge space of possible equations. Current approaches make strong assumptions about the form of the equation and thus fail to discover many well-known systems. Moreover, many of them resolve the equation-data mismatch by estimating the derivatives, which makes them inadequate for noisy and infrequently sampled systems. To this end, we propose D-CIPHER, which is robust to measurement artifacts and can uncover a new and very general class of differential equations. We further design a novel optimization procedure, CoLLie, to help D-CIPHER search through this class efficiently. Finally, we demonstrate empirically that it can discover many well-known equations that are beyond the capabilities of current methods.
翻译:封闭式差异方程式,包括部分差异方程式和高阶普通差异方程式,是科学家用来模拟和更好地了解自然现象的最重要工具之一。直接从数据中发现这些方程式具有挑战性,因为它要求数据中未观测到的各种衍生物之间建模关系(等式-数据错配),它涉及搜索巨大的可能方程式空间。目前的方法对方程式的形式做出了强有力的假设,因而未能发现许多众所周知的系统。此外,许多这些方程式通过估计衍生物来解决方程式数据错配问题,这使得这些方程式不足以适应吵闹和不经常抽样的系统。为此,我们提议D-IPHER,它对于测量文物是强有力的,能够发现一种新的非常普遍的差异方程式。我们进一步设计新的优化程序,Collie,以帮助D-CPHER高效地通过这一类进行搜索。最后,我们从经验上证明,它可以发现许多超出当前方法能力的众所周知的方程式。