Data-driven formulation of natural laws by recursive-LASSO-based symbolic regression

02/18/2021
by   Yuma Iwasaki, et al.
0

Discovery of new natural laws has for a long time relied on the inspiration of some genius. Recently, however, machine learning technologies, which analyze big data without human prejudice and bias, are expected to find novel natural laws. Here we demonstrate that our proposed machine learning, recursive-LASSO-based symbolic (RLS) regression, enables data-driven formulation of natural laws from noisy data. The RLS regression recurrently repeats feature generation and feature selection, eventually constructing a data-driven model with highly nonlinear features. This data-driven formulation method is quite general and thus can discover new laws in various scientific fields.

READ FULL TEXT
research
09/03/2021

Integration of Data and Theory for Accelerated Derivable Symbolic Discovery

Scientists have long aimed to discover meaningful equations which accura...
research
08/02/2022

What can we Learn by Predicting Accuracy?

This paper seeks to answer the following question: "What can we learn by...
research
09/08/2014

Symbolic regression of generative network models

Networks are a powerful abstraction with applicability to a variety of s...
research
08/18/2023

AI Hilbert: From Data and Background Knowledge to Automated Scientific Discovery

The discovery of scientific formulae that parsimoniously explain natural...
research
06/03/2020

Hybrid Scheme of Kinematic Analysis and Lagrangian Koopman Operator Analysis for Short-term Precipitation Forecasting

With the accumulation of meteorological big data, data-driven models for...
research
05/01/2021

Data-driven discovery of physical laws with human-understandable deep learning

There is an opportunity for deep learning to revolutionize science and t...
research
05/19/2017

Data-driven Optimal Transport Cost Selection for Distributionally Robust Optimizatio

Recently, (Blanchet, Kang, and Murhy 2016) showed that several machine l...

Please sign up or login with your details

Forgot password? Click here to reset