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Abstract Finding high temperature superconductors (HTS) has been a continuing challenge due to the difficulty in predicting the transition temperature ( T c ) of superconductors. Recently, the efficiency of predicting T c has been greatly improved via machine learning (ML). Unfortunately, prevailing ML models have not shown adequate generalization ability to find new HTS, yet. In this work, a graph neural network model is trained to predict the maximal T c ( T c max ) of various materials. Our model reveals a close connection between T c max and chemical bonds. It suggests that shorter bond lengths are favored by high T c , which is in coherence with previous domain knowledge. More importantly, it also indicates that chemical bonds consisting of some specific chemical elements are responsible for high T c , which is new even to the human experts. It can provide a convenient guidance to the materials scientists in search of HTS.
Gu et al. (Sat,) studied this question.