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cNORM:news and change-log
This file documents the development of the package as well as open
issues or points for further improvements.
Version in 3.4.0,
Date: 04.11.2024
Changes:
- new function ‘compare’ added to visually compare models
- inclusion of 10-fold subsampling and averaging of model coefficients
in model estimation which produces more stable results
Version in 3.3.1,
Date: 16.10.2024
Changes:
- added check on score data in cnorm.betabinomial
- switch to rankByGroup in cnorm in case age variable is plausibly
grouping variable
- bug in subtitles of plotPercentileSeries fixed
- adjusted output and model recommendations in cnorm.cv
- fixed legend in plotDensity()
- bug in predictRaw fixed, which caused plotDerivative to plot wrong
results
- improved initial starting and control parameters in
cnorm.betabinomial2
- bugs in diagnostics.betabinomial fixed
- vignettes revised
Version in 3.3.0,
Date: 2024.08.26
Changes:
- checkConsistency performance improvement; now runs 100 times
faster
- visualization improvement in ‘plotDerivative’
- bug in subheadline of plotPercentileSeries fixed
- reduced number of messages
- Starting work on inclusion of regularized Taylor models. Since
simulation studies with glmnet did not show improvement, we generate
much more models and preselect those, which pass an initial consistency
check. Now, the a consistent model with the highest R2 is selected. R^2
and terms can of course still be specified as usual.
- plotSubset improved: now indicates, which models did not pass the
initial consistency check via empty circles
- Plots improved generally, now prints formula and statistical
indicators in Greek letters and R^2 with the 2 uppercase
Version in 3.2.0,
Date: 2024.08.17
Changes:
- Parametric modelling with beta binomial functions now fully
implemented
- S3 functions predict, plot and summary added for bet a binomial
models
- Fixed input validation in getNormScoreSE
- Started intensive work on regularization in Taylor models (planned
for v4.0)
- Vignette on modelling with beta binomial distribution
- Transition from lattice to ggplot2
- Code on covariates removed from the complete package
- cNORM-Demo vignette revised
- code simplification in plotting functions, parameters removed
- new parameter to plot raw scores in plotPercentiles (default
FALSE)
- ‘buildCnormObject’ function added to help with compatibility (joins
data and model to cnorm object)
- cNORM.GUI() updated
- datasets life, mortality and EPM removed
- performance optimization
Version in 3.1.0,
Date: 2024.07.19
Changes:
- Added parametric continuous norming with beta binomial family and
new functions betaCoefficients, betaTable, betaByGroup and
betaContinuous; beware - still experimental (Jan. 2024)
- Fixed bug in bestModels function when predictors are specified
Version in 3.0.4
Date: 2023.10.08
Changes:
- Added warning in ‘cnorm’ in case, both age and group is
specified
- extended cnorm.cv for use of weights and sliding window
- added silent option to several functions to reduced the number of
messages
- revised function documentation
Version in 3.0.3
Date: 2023.05.22
Changes:
- fixed regression bug in the internal predictNormByRoots-function for
R4.3.0
- added new references
- new results in printSubset and plotSubset: F-tests on consecutive
models
- internal improvements in calcPolyInLBase2 for retrieving regression
function coefficients at specific age. This speeds up norm score
retrieval by 40%, leading to vast performance improvements in large
datasets and in cross validation by cnorm.cv
- Added WPS publisher as a funder. WPS helped financing the weighting
procedure for post stratification based on iterative proportional
fitting (“Raking”)
- citeEntry replaced by bibentry in inst/citation
Version in 3.0.2
Date: 2022.08.18
Changes:
- fix for bug in normTable function when ranking order is
reversed
- added option to apply conventional norming in ‘cnorm’ by leaving out
the grouping variable
- extended plotPercentiles, plotNorm and plotRaw for usage with
conventional norming
- vignette extend for explaining conventional norming
Version in 3.0.1
Date: 2022.04.11
Changes:
- t parameter added to data preparation in the shiny GUI
- default paremeters in cnorm now k = 5 and t = 3
- error in shiny GUI corrected: Download data
- WeigtedRegression vignette extended
- Additional descriptive information in modeling when using
weights
- Vignette cNORM-Demo revised
Version in 3.0.0
Date: 2022.03.28
Changes:
- Major version: Includes weighting functions to overcome biased norm
samples, by providing marginal means factor levels of stratification
variables in the population as a data frame New function:
computeWeights()
- Newly developed, highly performant and unbiased weighted ranking
procedure
- New vignette: ‘WeightedRanking’
- Modelling returns info on range of weights if post stratification is
used
- automatically remove cases with missings in ‘cnorm’ function
- ppvt dataset exchanged with unstratified sample with additional
background variables (migration, region, sex)
- Documentation updated
- Author sequence changed. Alex is now first and corresponding author.
Please direct questions to lenhard@psychometrica.de
- minor changes: if(class(x) == “cnorm”) exchanged with if(inherts(x,
“cnorm”)) throughout package
Version in 2.1.1
Date: 2021.10.13
Changes:
- normList parameter in plotNormCurves not working in non T score
scales fixed
- lower CI not reported correctly in normTable and rawTable
corrected
- documentation in normTable and rawTable extended
- internal prettyPrint function corrected; now it displays interval in
the middle of the tables correctly in rawTable and normTable
function
Version in 2.1.0
Date: 2021.08.10
Changes:
- add remarks on decrease of age power parameter in computePowers when
R2 is low
- add parameter for powers of a in computePowers, prepareData,
bestModel and cnorm
- predictNorm is now able to handle NA
- count, how often terms had been selected in cnorm.cv
- pretty print option added to normTable and rawTable to collapse
intervals and round to meaningful precision
- Bug corrected in normTable when using age vector to compute series
of norm tables
Version in 2.0.4
Date: 2021.07.24
Changes:
- Fixed bug in setting getNormScoreSE and added option to calculate
RMSE (now default)
- Corrected y axis label in plotDerivative
- changes header in plotNorm from SE to RMSE
- exceptions catched in predictNorm
Version in 2.0.3
Date: 2021.04.10
Changes:
- Fixed bug in setting minNorm and maxNorm in predictNorm, if
attribute is missing
- Aligned function in predictNorm for single scores and vectors
- Code simplification
- suboptimal model selection when leaps.setups dependencies found; bug
fixed
Version in 2.0.2
Date: 2021.01.30
Changes:
- Fixed bug in rankBySlidingWindow due to ranking
- New function for building groups and assign group means:
getGroups
- display errors fixed in plotPercentiles, function optimized
- Fixed regression: Clipping of minRaw and maxRaw in predictRaw
Version in 2.0.1
Date: 2021.01.05
Changes:
- Fixing errors in the context of weighted percentile modelling
- Code change of weighted rank estimation from
https://aakinshin.net/posts/weighted-quantiles/ code by Andrey
Akinshin
- Additional message for plotting, when weighted percentiles are
used
- Use weighted percentiles in plotPercentiles
- automatic weighting deactivated in bestModel, since it is already
applied in ranking
- suppressWarnings in weighted ranking
Version in 2.0.0 (release)
Date: 2020.12.04 Version 2.0.0 features many fundamental improvements
both relating to the procedure but as well to the package itself. It
introduces weighted percentiles and thus helps in correcting violations
of representativeness in the norm sample. There is a new main function
‘cnorm()’ that returns a cnorm object. Most functions now accept this
cnorm object and do not require separate data objects and statistical
models. And finally S3 methods plot(), summary() and print() have been
introduced.
Changes:
- Preparing for next major release with complete redesign of S3 method
structure and weighting
- New function cnorm() that does all the data preparation and
modelling in one step It returns a cnorm object, which can be used in
all model check, plotting and prediction functions
- New S3 functions: print, plot, summary
- Vignette revised
- All functions have been extended to accept a cnorm object instead of
data and / or model
- prepareData, rankByGroup and rankBySlidingWindow no have the option
to provide a weighting parameter to compensate for imbalances. The
percentiles are weighted accordingly. The weighted ranking is based on
an adaption of wtd.rank of the Hmisc package, provided by the courtesy
of Frank Harrell
- bestModel automatically uses the weighting parameter from the
ranking (if applied)
- prepareData, rankByGroup and rankBySlidingWindow can now directly
handle vectors instead of a data frame, e. g. rankByGroup(raw =
elfe\(raw, group = elfe\)group)
- If no group is provided and only a raw vector is present
e.g. ranByGroup(raw=elfe$raw), traditional ranking of a single group is
done
- Power parameter k added to prepareData
- New convenience function modelSummary
- New method getNormScoreSE added: Compute SE for regression based
norm scores sensu Oosterhuis van der Ark & Sijtsma (2016)
Version in 1.2.4 (release)
Date: 2020.10.14
Changes:
- Improvements in Shiny GUI: download buttons for data and model,
introduction page, CI for norm tables
- Descending order bugs corrected in Shiny GUI
- Option to automatically compute confidence intervalls in rawTable()
and normTable() via CI and reliability parameters
- repeated cross validation cnorm.cv now calculates RMSE for norm
scores
- repeated cross validation cnorm.cv can now use a prespecified
formula
- data cleaning in output of cnorm.cv
Version in 1.2.3 (release)
Date: 2020.06.18
Changes:
- Error in citation fixed
- Improved explanations in the Shiny GUI
- Additional ‘Update’-Buttons in norm and raw scores plot in
visualization tab of shiny gui
- removed unnecessary import askYesNo
- spell checking in diverse function descriptions
- correction for monotonicity in rawTable and normTable (now
default)
- predictRaw can now return matrices for list of norm x age
- new dataset added on the basis of the EPM paper
- Bug in plotPercentiles fixed for datasets with descending ranking
order
- ‘descend’ parameter added to prepareData
- rawTable can now return matrices
Version in 1.2.2 (fifth
release)
Date: 2019.09.18
Changes:
- Error in rankByGroup and rankBySlidingWindow when covariate variable
name was used
- warning added to rankBySlidingWindow in case, age and group do not
correspond
- rankBySlidingWindow accepts age variable in addition to age variable
name
- plotPercentiles now allows plotting both degrees of binary
covariate
- code cleaning in plotPercentiles
- bestModel automatically does plotPercentiles if parameter plot set
to TRUE
- Citation file added
Version in 1.2.1
Date: 2019.08.01
Changes:
- prepareDate issues warnings if age and group values do not
relate
- modified message in bestModel function if R2 is not reached
- if R2 and terms are not specified in bestModel function, fall back
to model 5 in case R2 does not reach .99 in most complex model
- Additional message in bestModel in case of high number of
terms
- Code simplification in computePowers by using ‘poly’ function
- Performance improvement and code cleaning in checkConsistency
- Multiple R2 output added to computePowers
- new option to add index labels to data points in plotSubset
- cnorm.cv now respects sliding window ranking
- silent parameter added to prepareData and computePowers
- rankBySlidingWindo and rankByGroup add width parameter to data
preparation
- pCutoff in cnorm.cv now adjusts for sample size
Version in 1.2.0 (fourth
release)
Date: 2019.07.26
Changes:
- Preparing for the inclusion of a binary covariate. The package is
been rewritten by larger parts NOTE: The inclusion of a covariate is
currently still experimental and not optimized. Please use carefully! If
covariates are central for your research question, consider packages
like GAMLSS or quantreg
- Entering systematic testing
- BUG fixed: retrieving normtables and norm scores in large datasets
could produce outlier (hashing function to remove duplicates was
flawed)
- Corrected keywords for datasets
Version in 1.1.9
Date: 2019.07.07
Changes:
- weighting added to bestModel-function
- cast to data.frame in prepareData method to prevent SPSS import
failing
- Ordering of raw table when using descending values
- Warning message added to computePowers function in case the multiple
R2 between the explanatory variable and the raw score is below .05;
modelling norm scores in dependence of age is questionable in that
case
- prepareData, rankByGroup and rankBySlidingWindow now accept
variables instead of variable names as well
- rankByGroup and rankBySlidingWindow display warning in case of small
groups
Version in 1.1.8 (Third
release to CRAN)
Date: 2019.03.15 (mainly testing and cleaning minor errors)
Changes:
- fixing exceptions
- group and age can now be deactivated, resulting in conventional
norming procedure, based in ranking + regression over powers of L
Version in 1.1.7
Date: 2019.02.28
Changes:
- bestModel function now accepts a formula as a predictors object
- plotPercentile now accepts descending ranking
- rawTable and normTable adapted for descending values
- rangeCheck prints additional information
- Leaner GUI with more options
- predictNorm now much faster through using lookup tables, large speed
gains as well for depending functions
- Setting age = FALSE in computePowers prevents computation of powers
of age and interactions. All plotting and modelling functions changed
accordingly. cNORM in this case models norm score tables simply based on
regression without computing different groups
- normTable automatically chooses default values for minNorm, maxNorm
and step
Version in 1.1.6
Date: 2019.02.07, third release on CRAN
Changes:
- Improvement to cv function in GUI and in package
Version in 1.1.5
Date: 2019.02.06, third release on CRAN
Changes:
- Cross Validation added to shiny GUI
- cnorm.cv documentation improved
- added information to BestModel output
Version in 1.1.4
Date: 2018.12.18
Changes:
- scale parameter added to prepareData function
- fix for plotNorm by group with missing values
Version in 1.1.3 -
Second release on CRAN
Date: 2018.12.09
Changes:
- rmarkdown moved from imports to suggests
- cnorm.cv info added to README
Version in 1.1.2
Date: 2018.12.08
Changes:
- deleted code in vignette needing to much build time
- removed UTF-8 attributes from ppvt dataset and cleared all datasets
from non ASCII signs
- deleted code in vignette needing to much build time
- additional tests run on R-hub
- added rmarkdown to imports
Version in 1.1.1
Date: 2018.12.01
Changes:
- Parameters added to cv.norm: Significance level for stratification
process
- Additional plot in cv.norm: delta R2 in norm score validation
- Example in readme improved
- CDC data: group variable set to center of interval
- descend parameter removed from plotPercentileSeries,
plotPercentiles, checkConsistency, rawTable & normTable; instead
take default from model; vignette updated accordingly
- stop criterion added to data sampling in cnorm.cv
- cv.norm: lines added to R2 delta plot
- normTable and rawTable can now produce list of tables
Version in 1.1.0
Date: 2018.11.23
Changes:
- Cross validation added: new function: cnorm.cv() for assessing RMSE
for raw data and R2 and CROSSFIT for norm data
- Data table output for cnorm.cv
- rankBySlidingWindow now accessible via prepareData()
- group, raw, age and width can now be provided in cnorm.cv
- parameter for full cross validation (separate ranking for train and
validation)
- Additional NA checks and warning messages
- plotPercentiles now with R2adjr in title
Version in 1.0.3
Date: 2018.11.16
Changes:
- Additional instruction on series section of visualization tab in
Shiny GUI
- Code cleanup in bestModel function
- SE added to plotNorm based on Oosterhuis, van der Ark & Sijtsma
(2016)
- RMSE added to model object (m$subsets), to plotRaw and to
plotSubset
- additional plotting options added to GUI:
- plotting of differences in raw and norm plot
- RMSE in model selection information function
Version in 1.0.2
Date: 2018.11.16
Changes:
- Improvements in precision of plotPercentiles
- error corrected in ppvt dataset: groups did not represent group
means
- function description in ‘ranBySlidingWindow’ updated
- checking for missing packages in shiny GUI improved
- user menu asking to install missing packages added
- derive-function: more general approach with “order” parameter
- plotDerivative function can now plot derivatives of higher
order
- exclude cases with missing values in rankByX functions
- percentile columns added to rawTable and normTable
- additional data cleansing for data objects imported from Excel file
format
Version in 1.0.1 -
First release on CRAN
Date: 2018.11.03
Changes:
- Improvements in the GUI: Waiting circle shown to indicate ongoing
computation
- Additional help texts on best model in GUI
- Additional plotting options in cNORM.GUI(): Raw Score and Norm Score
plots
- User input asking for missing suggested packages to install
Version in 1.0.0
Date: 2018.10.26
Changes:
- Final polishing finished; releasing first major version
Version in 0.9.20
Date: 2018.10.24
Changes:
- GUI with Shiny finished
- … now working on finally releasing the package
Version in 0.9.19
Date: 2018.10.20
Changes:
- API changed: predictNormValue renamed to predictNorm
- Shiny GUI enhanced
- Additional plotting options in plotNorm and plotRaw
- less strict warning messages in predictNormValue function and
checkConsistency
Version in 0.9.18
Date: 2018.10.08
Changes:
- First shiny prototype (many thanks to Sebastian Gary); please use
cNORM.GUI() to start user interface
Version in 0.9.17
Date: 2018.10.01
Changes:
- predictNormValue fixed and optimized (many thanks to Sebastian
Gary)
- API change with respect to predictNormValue, rawTable and
plotNorm
- plotNorm: norm score boundaries guessed by min and max score from
modelling
Version in 0.9.16
Date: 2018.09.21
Changes:
- bug in predictNormValue partly fixed (further optimization
necessary)
- API change: plotValues renamed to plotRaw
- new function: plotNorm
Version in 0.9.15
Date: 2018.09.18
Changes:
- plotDensity function added
- attributes added to data.frame to increase usability
Version in 0.9.13
Date: 2018.09.16
Changes:
- predictNormValue with higher precision and effectivity
- rawTableQuick removed from source code
Version in 0.9.12
Date: 2018.09.11
Changes:
- ‘simulateRasch’ to simulate test data was added
- old sim functions removed
- documentation improved
- new parameters to bestModel in order to force covariates into
regression
- additional checks in box cox functions
Version in 0.9.9
Date: 2018.09.06
Changes:
- Enhancements to the ‘prepareData’ function
Version in 0.9.8
Date: 2018.09.05
Changes:
- Life expectancy dataset of the World Bank added
- Mortality of infants per 1000 life birth from 1960 to 2017
added
- Minor changes in functions to check data integrity and
exceptions
- Vignette updated
Version in 0.9.7
Date: 2018.08.31
Changes:
- License changed to AGPL
- Capitalizations in labels of plots
- min and max renamed to minRaw and maxRaw (where appropriate)
- terminology: standard or normal score instead of norm; score instead
of value
- new function for model validation: plotPercentileSeries
- many functions now draw the default values from the model (plotting
and predicting)
Version in 0.9.6
Date: 2018.08.28
Changes:
- Minor improvements in function descriptions
- API of plotSubset changed due to new plotting options
Version in 0.9.5
Date: 2018.08.25
Changes:
- New, large dataset for BMI centile estimation from CDC included,
type ?CDC for explanation
- Extensive documentation available via
https://www.psychometrica.de/cNorm_en.html (in progress)
Version in 0.9.4
Date: 2018.08.23
Changes:
- Generating group variable in rankBySlidingWindow
- parameters in plotPercentile to restrict age range
- ppvt dataset restricted
Version in 0.9.3
Date: 2018.08.20
Changes:
- plotNormCurves enhanced (Thanks to Sebastian Gary)
- new function to plot semi parametric analyses via box cox power
transformation: plotBoxCox
- variable “explanatoryVariable” and “normVariable” in computePowers
function renamed for easier API
Version in 0.9.2
Date: 2018.08.18
Changes:
- Additional dataset: vocabulary development (PPVT4)
Version in 0.9.1
Date: 2018.08.16
Changes:
- Added predictRawBC and predictNormBC for computing norm and raw
values based on the parametric box cox power function parameters
- New contributor: Sebastian Gary, welcome to the team!
- Missing raw variable definition in plotValues corrected
Version in 0.9.0
Date: 2018.08.14
Changes:
- Box Cox power transformation for regression model at specific age:
optional parametric modelling for non-parametric regression model
Version in 0.8.9
Date: 2018.08.13
Changes:
- Convenience method for selection best model added:
‘printSubset’
- predictNormValue now accepts lists of values as well
Version in 0.8.8
Date: 2018.08.12
Changes:
- parameter checks added
- new parameter ‘descriptives’ added to rankByGroup and
rankBySlidingWindow added to retrieve descriptive statistics for each
observation
- improvements in the documentation
- errors in bestModel and plotPercentiles corrected, when variable
names are not as in example sample
Version in 0.8.6
Date: 2018.08.11
Changes:
- new function: ‘rankBySlidingWindow’ which can be used for data sets
with continuous age variables
- error corrected for data being loaded from SPSS files
- improvements in the documentation
Version in 0.8.5
Date: 2018.08.06
Changes:
- new function for simulating data
Version in 0.8.3
Date: 2018.08.03
Changes:
- Code cleaning and formatting
Version in 0.8.2
Date: 2018.08.02
Changes:
- new internal function: rawTableQuick for speeding up generating norm
tables Still has to be checked for working with descending values. Works
only, if model assumptions are valid
Version in 0.8.0
Date: 2018.08.01
Changes:
- new function: rawTable allows creating norm tables with assignment
of raw -> norm values solves inverse function of regression model
with brute force
Version in 0.7.11
Date: 2018.07.31
Changes:
- improved ‘prepareData’ function
Version in 0.7.10
Date: 2018.07.28
Changes:
- Description for computePowers improved
- option in plotPercentile to use percentile scale or self defined
c(mean, sd)
Version in 0.7.9
Date: 2018.07.28
Changes:
- ‘descend’ parameter added to consistencyCheck and normTable
- dependency rColorBrewer removed; plotPercentiles changed
accordingly
- latticeExtra moved to ‘suggests’
Version in 0.7.8
Date: 2018.07.27
Changes:
- ‘descend’ parameter added to consistencyCheck and normTable
Version in 0.7.7
Date: 2018.07.27
Changes:
- Small changes to error messages in bestModel
- printing of min value in plotDerivate removed
Version in 0.7.6
Date: 2018.07.27
Changes:
- parameter ‘predictors’ added to allow self defined regression
functions, e. g. for the inclusion of other ranking parameters like
sex
- ‘type’ parameter added to ‘plotPercentile’ to allow selection of
quantile algorithm. Please consult help(quantile) for further
information on ‘type’
Version in 0.7.5
Date: 2018.07.26
Changes:
- dependency dplyr removed: rankByOrder and plotPercentiles
rewritten
- API-change: derivationPlot renamed to plotDerivate
- small changes to vignette and readme
- parameter “raw” added to rankByGroup to specify raw value
variable
- rawVar and groupVar in plotPercentiles renamed to raw and group to
make API more coherent
Version in 0.7.4
Date: 2018.07.25
Changes:
- rankByOrder: ranking in descending order added
Version in 0.7.3
Date: 2018.07.25
Changes:
- Additional ranking algorithms: Filliben, Levenbach, Yu & Huang;
API changed to index
- scale can be specified as double vector with c(mean, sd)
- vignette updated accordingly
Version in 0.7.2
Date: 2018.07.24
Changes:
- None. This is the first release
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