2022
DOI: 10.26434/chemrxiv-2022-95ssc
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Learning Conductance: Gaussian Process Regression for Molecular Electronics

Abstract: Experimental studies of charge transport through single molecules often rely on break junction setups, where molecular junctions are repeatedly formed and broken while measuring the conductance, leading to a statistical distribution of conductance values. Modeling this experimental situation and the resulting conductance histograms is challenging for theoretical methods, as computations need to capture structural changes in experiments, including the statistics of junction formation and rupture. This type of e… Show more

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