Scientific intuition inspired by machine learning generated hypotheses

arXiv:2010.14236v241 citations
Originality Incremental advance
AI Analysis

This work addresses the challenge of generating scientific understanding from ML models for researchers in physical sciences, offering a novel approach to inspire human intuition and accelerate conceptual discovery.

The authors tackled the problem of extracting scientific insights from machine learning models beyond numerical predictions, applying gradient boosting in decision trees to chemistry and physics datasets to discover new motifs for controlling molecular properties and gain understanding of quantum entanglement experiments.

Machine learning with application to questions in the physical sciences has become a widely used tool, successfully applied to classification, regression and optimization tasks in many areas. Research focus mostly lies in improving the accuracy of the machine learning models in numerical predictions, while scientific understanding is still almost exclusively generated by human researchers analysing numerical results and drawing conclusions. In this work, we shift the focus on the insights and the knowledge obtained by the machine learning models themselves. In particular, we study how it can be extracted and used to inspire human scientists to increase their intuitions and understanding of natural systems. We apply gradient boosting in decision trees to extract human interpretable insights from big data sets from chemistry and physics. In chemistry, we not only rediscover widely know rules of thumb but also find new interesting motifs that tell us how to control solubility and energy levels of organic molecules. At the same time, in quantum physics, we gain new understanding on experiments for quantum entanglement. The ability to go beyond numerics and to enter the realm of scientific insight and hypothesis generation opens the door to use machine learning to accelerate the discovery of conceptual understanding in some of the most challenging domains of science.

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