Statistical Tools for Analyzing Measurements of Charge Transport
Citations Over TimeTop 10% of 2012 papers
Abstract
This paper applies statistical methods to analyze the large, noisy data sets produced in measurements of tunneling current density (J) through self-assembled monolayers (SAMs) in large-area junctions. It describes and compares the accuracy and precision of procedures for summarizing data for individual SAMs, for comparing two or more SAMs, and for determining the parameters of the Simmons model (β and J0). For data that contain significant numbers of outliers (i.e., most measurements of charge transport), commonly used statistical techniques—e.g., summarizing data with arithmetic mean and standard deviation and fitting data using a linear, least-squares algorithm—are prone to large errors. The paper recommends statistical methods that distinguish between real data and artifacts, subject to the assumption that real data (J) are independent and log-normally distributed. Selecting a precise and accurate (conditional on these assumptions) method yields updated values of β and J0 for charge transport across both odd and even n-alkanethiols (with 99% confidence intervals) and explains that the so-called odd–even effect (for n-alkanethiols on Ag) is largely due to a difference in J0 between odd and even n-alkanethiols. This conclusion is provisional, in that it depends to some extent on the statistical model assumed, and these assumptions must be tested by future experiments.
Related Papers
- → A study of outliers in the exponential smoothing approach to forecasting(2011)38 cited
- → Outliers Identification Model in Point-of-Sales Data Using Enhanced Normal Distribution Method(2019)7 cited
- The robustness data processing method about eliminating outlier(2004)
- → One needs to be careful when dismissing outliers: a realistic example(2016)1 cited
- → Outlier Robust Prediction(2012)