Grid-Based Correlation Analysis to Identify Rare Quantum Transport Behaviors
Nathan D. Bamberger, Dylan Dyer, Keshaba N. Parida, Dominic V., McGrath, and Oliver L.A. Monti

TL;DR
This paper introduces a novel grid-based correlation analysis framework designed to detect rare quantum transport behaviors in single-molecule experiments, overcoming limitations of traditional clustering methods.
Contribution
The work presents a new correlation-based analysis method specifically tailored for identifying rare events in single-molecule transport data, providing a different approach from existing clustering techniques.
Findings
Successfully detects rare conductance plateaus in experimental data
Reproducibly locates rare behaviors that traditional methods miss
Enhances the analysis of diverse molecular transport phenomena
Abstract
Most single-molecule transport experiments produce large and stochastic datasets containing a wide range of behaviors, presenting both a challenge to their analysis, but also an opportunity for discovering new physical insights. Recently, several unsupervised clustering algorithms have been developed to help extract and separate distinct features from single-molecule transport data. However, these clustering approaches have been primarily designed and used to extract major dataset components, and are consequently likely to struggle with identifying very rare features and behaviors which may nonetheless contain physically meaningful information. In this work, we thus introduce a completely new analysis framework specifically designed for rare event detection in single-molecule break junction data to help unlock such information and provide a new perspective with different implicit…
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