Visualising data distributions with kernel density estimation and reduced chi-squared statistic
Abstract
The application of frequency distribution statistics to data provides objective means to assess the nature of the data distribution and viability of numerical models that are used to visualize and interpret data. Two commonly used tools are the kernel density estimation and reduced chi-squared statistic used in combination with a weighted mean. Due to the wide applicability of these tools, we present a Java-based computer application called KDX to facilitate the visualization of data and the utilization of these numerical tools.
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Cite this version of the work
Christopher J. Spencer, Chris Yakymchuk, Mahmoudreza Ghaznavi
(2017).
Visualising data distributions with kernel density estimation and reduced chi-squared statistic. UWSpace.
http://hdl.handle.net/10012/13324
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