Neural Symbolic Regression that Scales

06/11/2021
by   Luca Biggio, et al.
0

Symbolic equations are at the core of scientific discovery. The task of discovering the underlying equation from a set of input-output pairs is called symbolic regression. Traditionally, symbolic regression methods use hand-designed strategies that do not improve with experience. In this paper, we introduce the first symbolic regression method that leverages large scale pre-training. We procedurally generate an unbounded set of equations, and simultaneously pre-train a Transformer to predict the symbolic equation from a corresponding set of input-output-pairs. At test time, we query the model on a new set of points and use its output to guide the search for the equation. We show empirically that this approach can re-discover a set of well-known physical equations, and that it improves over time with more data and compute.

READ FULL TEXT
research
06/20/2011

Dimensionally Constrained Symbolic Regression

We describe dimensionally constrained symbolic regression which has been...
research
05/24/2021

A Flawed Dataset for Symbolic Equation Verification

Arabshahi, Singh, and Anandkumar (2018) propose a method for creating a ...
research
05/30/2021

SyReNets: Symbolic Residual Neural Networks

Despite successful seminal works on passive systems in the literature, l...
research
08/27/2019

A Search for the Underlying Equation Governing Similar Systems

We show a data-driven approach to discover the underlying structural for...
research
09/04/2022

Symplectically Integrated Symbolic Regression of Hamiltonian Dynamical Systems

Here we present Symplectically Integrated Symbolic Regression (SISR), a ...
research
05/27/2019

AI Feynman: a Physics-Inspired Method for Symbolic Regression

A core challenge for both physics and artificial intellicence (AI) is sy...
research
10/22/2020

Neural-Symbolic Integration: A Compositional Perspective

Despite significant progress in the development of neural-symbolic frame...

Please sign up or login with your details

Forgot password? Click here to reset