A diagnostic function to examine candidate distributions to model univariate data

Master of Science === Department of Statistics === Suzanne Dubnicka === To help with identifying distributions to effectively model univariate continuous data, the R function diagnostic is proposed. The function will aid in determining reasonable candidate distributions that the data may have come f...

Full description

Bibliographic Details
Main Author: Richards, John
Language:en_US
Published: Kansas State University 2010
Subjects:
R
Online Access:http://hdl.handle.net/2097/4093
id ndltd-KSU-oai-krex.k-state.edu-2097-4093
record_format oai_dc
spelling ndltd-KSU-oai-krex.k-state.edu-2097-40932016-03-01T03:50:24Z A diagnostic function to examine candidate distributions to model univariate data Richards, John statistics R statistical computing goodness of fit probability distributions diagnostic Statistics (0463) Master of Science Department of Statistics Suzanne Dubnicka To help with identifying distributions to effectively model univariate continuous data, the R function diagnostic is proposed. The function will aid in determining reasonable candidate distributions that the data may have come from. It uses a combination of the Pearson goodness of fit statistic, Anderson-Darling statistic, Lin’s concordance correlation between the theoretical quantiles and observed quantiles, and the maximum difference between the theoretical quantiles and the observed quantiles. The function generates reasonable candidate distributions, QQ plots, and histograms with superimposed density curves. When a simulation study was done, the function worked adequately; however, it was also found that many of the distributions look very similar if the parameters are chosen carefully. The function was then used to attempt to decipher which distribution could be used to model weekly grocery expenditures of a family household. 2010-05-10T13:31:52Z 2010-05-10T13:31:52Z 2010-05-10T13:31:52Z 2010 May Report http://hdl.handle.net/2097/4093 en_US Kansas State University
collection NDLTD
language en_US
sources NDLTD
topic statistics
R
statistical computing
goodness of fit
probability distributions
diagnostic
Statistics (0463)
spellingShingle statistics
R
statistical computing
goodness of fit
probability distributions
diagnostic
Statistics (0463)
Richards, John
A diagnostic function to examine candidate distributions to model univariate data
description Master of Science === Department of Statistics === Suzanne Dubnicka === To help with identifying distributions to effectively model univariate continuous data, the R function diagnostic is proposed. The function will aid in determining reasonable candidate distributions that the data may have come from. It uses a combination of the Pearson goodness of fit statistic, Anderson-Darling statistic, Lin’s concordance correlation between the theoretical quantiles and observed quantiles, and the maximum difference between the theoretical quantiles and the observed quantiles. The function generates reasonable candidate distributions, QQ plots, and histograms with superimposed density curves. When a simulation study was done, the function worked adequately; however, it was also found that many of the distributions look very similar if the parameters are chosen carefully. The function was then used to attempt to decipher which distribution could be used to model weekly grocery expenditures of a family household.
author Richards, John
author_facet Richards, John
author_sort Richards, John
title A diagnostic function to examine candidate distributions to model univariate data
title_short A diagnostic function to examine candidate distributions to model univariate data
title_full A diagnostic function to examine candidate distributions to model univariate data
title_fullStr A diagnostic function to examine candidate distributions to model univariate data
title_full_unstemmed A diagnostic function to examine candidate distributions to model univariate data
title_sort diagnostic function to examine candidate distributions to model univariate data
publisher Kansas State University
publishDate 2010
url http://hdl.handle.net/2097/4093
work_keys_str_mv AT richardsjohn adiagnosticfunctiontoexaminecandidatedistributionstomodelunivariatedata
AT richardsjohn diagnosticfunctiontoexaminecandidatedistributionstomodelunivariatedata
_version_ 1718196469344763904