radiant.model 1.6.8
- Fixed a bug in 
write.coeff when only one explanatory
variable has been selected in linear or logistic regression 
radiant.model 1.6.7
- Fixed documentation for decision tree sensitivity analysis
 
- Added a warning in case an integer overflow occurs in decision
analysis calculations
 
- Fixed an issue where loading a yaml file for decision analysis could
overwrite an existing tree structure
 
- Fixed issues with Permutation Importance, Prediction, and Partial
Dependence plots with stepwise regression is used. Applies to both
logistic and linear regression
 
radiant.model 1.6.6
- Require Shiny 1.8.1. Adjustments related to icon-buttons were made
to address a breaking change in Shiny 1.8.1
 
- Reverting changes that removed 
req(input$dataset) in
different places 
radiant.model 1.6.3
- Fix for change in vip package metric name for r2
 
radiant.model 1.6.0
- Added scaling factor for profit calculations in Model > Evaluate
Classification
 
- Replace dplyr::all_equal with all.equal due deprecation warning
 
- Using “Radiant for R” in UI to differentiate from “Radiant for
Python”
 
- Check if the value of mtry for random forest is less than 0 or
larger than the number of variables in the model
 
- Addressed a package documentation issue due to a change in
roxygen2
 
radiant.model 1.5.0
- Improvements to screenshot feature. Navigation bar is omitted and
the image is adjusted to the length of the UI.
 
- Removed all references to 
aes_string which is being
deprecated in ggplot 
- Replaced “size” argument, deprecated in ggplot2, with
“linewidth”
 
- Added functionality to create pdp plots, prediction plots
(pred_plot), and permutation importance plots (varimp) for most
available models. Prediction plots are convenient to quickly check for
possible interactions which would take longer to generate using PDP
 
- Added AUC and Adjusted Pseudo R-squared to model fit metrics for
logistic regression
 
radiant.model 1.4.10
- Fix when parsing commands using strsplit on ‘;’
 
- Use 
dplyr::near to avoid issues with user-provided
probabilities not summing to 1 due to machine tolerance 
radiant.model 1.4.8
- gsub(“[-]”, ““, text) is no longer valid in R 4.2.0 and above.
Non-asci symbols will now be escaped using stringi
 
radiant.model 1.4.6
- Added option to create screenshots of settings on a page. Approach
is inspired by the snapper package by @yonicd
 
- Download decision analysis and decision tree plots generated using
mermaid (DiagrammeR) to png format
 
radiant.model 1.4.4
- Fix for change in input format for XGBoost that broke
cross-validation
 
radiant.model 1.4.3
- Fix for breaking change in as.vector for data.frames in the
development version of R
 
radiant.model 1.4.2
- Fixed 
is_empty function clash with
rlang 
- Adjustments to work with the latest version of 
shiny
and bootstrap4 
radiant.model 1.4.1
- Fixed an issue where variables used in Decision Analysis with a one
letter label caused problems evaluating the tree correctly
 
- Provide easier access to payoffs, probabilities, etc. from a solved
Decisions Analysis tree
 
radiant.model 1.4.0
- Allow jitter in regression plots with scatter
 
- Log transformation of nnet::multinom estimates is no longer
needed
 
radiant.model 1.3.16
- Remove missing values from tidy model output
 
radiant.model 1.3.15
- Allow user to include or exclude variables from the coefficient plot
in linear and logistic regression
 
- Fix for error on R-dev in Model > Collaborative
filtering (“Error in xtfrm.data.frame(x) : cannot xtfrm data
frames”)
 
radiant.model 1.3.14
- Fix for issue introduced by version 0.7.0 of the broom package
related to degrees of freedom in linear regression
 
- Fix for NoLD issue (XGBoost) identified by CRAN on Linux
 
- Fix for NoLD issue (XGBoost) identified by CRAN on Solaris
 
radiant.model 1.3.12
- Fix for Model > Decision analysis. Indent levels could
be affected when the input file contains blank lines
 
- Improvement in calculating PDP for categorical variables in plot.gbt
based on suggestion by @benmarchi
(https://github.com/radiant-rstats/radiant.model/issues/4)
 
radiant.model 1.3.9
- Minor adjustments in anticipation of dplyr 1.0.0
 
radiant.model 1.3.8
- Fix for cv.rforest when the max of 
mtry exceeds the
number of explanatory variables 
- Fix to write.coeff when one or more coefficients have a missing
value
 
- Use weighted mean and sd in write.coeff function when needed
 
- Added flexibility in using constants while defining the spec for
other randomly generated variables
 
radiant.model 1.3.5
- Adding 
OR% change as a columns in output for Model
> Logistic regression and the write.coeff
function 
- Restrict max number of levels in a “groupable” variable used in
Model > Evaluate classification and Model >
Multinomial logistic regression to no more than 50
 
- Avoid rounding the profit measures in Model > Evaluate
classificiation
 
radiant.model 1.3.2
- Improvements to cv.gbt to allow previously setup evaluation
functions to be used in cross validation for hyper parameter tuning
 
- Random Forest module using the 
ranger package. Includes
a cv.rforest function for tuning using
cross-validation 
- Gradient Boosted Trees module using the 
xgboost
package. Includes a cv.gbt function for tuning using
cross-validation. For convenience, all data.frame-to-matrix-conversion
is handled by radiant 
- Partial Dependence Plots for all trees-based estimation modules and
for neural networks
 
onehot function to make converting a data.frame with
categorical variables to a matrix a bit easier 
radiant.model 1.3.0
- Allow specification of multiple summary functions in Model >
Simulate > Repeat
 
- Documentation updates to link to new video tutorials
 
- Use 
patchwork for grouping multiple plots together 
- Allow formula input for 
logistic and
regress functions 
- Adjust correlation plot for NB to accommodate changes in Basics
> Correlation
 
- Fix for repeated simulation (Model > Simulate >
Repeat) where “Variables to re-simulate” and “Output variables”
were not always updated correctly when the set of available variables
changed
 
radiant.model 1.2.7
- Fix prediction issue when using I(x^2) in a stepwise estimation
process and x is removed
 
- Fix issue finding .as_int and .as_num when use radiant through shiny
server
 
radiant.model 1.2.5
- Option to drop the intercept for Model > Multinomial Logistic
Regression
 
- Provide access to the variables in a dataset during simulation and
repeated simulation.
 
radiant.model 1.2.2
- Various fixes related to stepwise estimation of Multinomial,
Logistic, and Linear regression model (e.g., VIF calculation, models
with only an intercept, perfect multicollinearity, etc.).
 
radiant.model 1.2.1
- Fix to ensure environment is not attached as an attribute to data
frames generated in the Model > Simulate tool
 
radiant.model 1.2.0
- Update action buttons that initiate calculations when one or more
relevant inputs are changed. When, for example, a model should be
re-estimated, a spinning “refresh” icon will be shown
 
- Add option to use a formula for the 
regress
function 
- Improved description of standardization process used. Added link to
Gelman
2008
 
- Added an influence plot that shows standardized residuals and
cooks-distance
 
radiant.model 1.1.10
- Fix for 
nobs in Model > Multinomial logistic
regression. 
- Fix for 
write.coeff for use with Model >
Multinomial logistic regression 
- Fix for decision trees that reference sub-trees. Environment to
evaluate the tree is now explicitly provided. This will now also work
with (sub) trees loaded from .yaml files
 
- Decision analysis now allows basic formulas in all parts of the
tree
 
- Added confusion matrix and misclassification error for Model
> Multinomial Logistic regression (MNL)
 
- Fix for saving multiple residual series for MNL
 
- Added a module for Multinomial Logistic regression (MNL) in the
Model > Estimate menu
 
- Fix for confusion matrix which couldn’t find find the selected
dataset in the web-interface
 
- Documentation fixes and updates
 
- Improved checks for variables that show no variation
 
- Numerous small code changes to support enhanced auto-completion,
tooltips, and annotations in shinyAce 0.4.1
 
- Automatically fix faulty spacing in user input in Model >
Decision Analysis
 
radiant.model 1.0.0
- Keyboard shortcut (Enter) when defining variable in Model >
Simulate
 
- Allow series of type ts and date in models and prediction
 
- Autocompletion for functions in Model > Simulate
 
- Require shinyAce 0.4.0
 
radiant.model 0.9.9.3
- Don’t use simulation variables when their type is not selected
 
- Provide auto-completion for variables and relevant functions in the
Simulate > Functions input
 
- Keyboard shortcuts for add a defined variable (i.e., press enter
after adding the last input value)
 
radiant.model 0.9.9.2
- Fix for variable definition in Model > Simulate where
names of discrete random variables were not properly ‘fixed’
 
- Fix for variable selection in Model > Decision analysis >
Sensitivity
 
radiant.model 0.9.9.0
- Allow any variable in the prediction dataset to be used to customize
a prediction when using Predict > Data & Command
 
- Fix for 
write.coeff when interactions, quadratic,
and/or cubic terms are included in a linear or logistic regression 
- Rescale predictions in 
cv.nn so RMSE and MAE are in the
original scale even if the data were standardized for estimation 
- Rename 
scaledf to scale_df for
consistency 
- Fix for plot sizing and printing of missing values in collaborative
filtering
 
- Fix for 
cv.nn when weights are used in estimation 
- Improve documentation for cross-validation of 
nn and
crtree models (i.e., cv.nn and
cv.crtree) 
- Fixes for breaking changes in dplyr 0.8.0
 
- Fix to download tables from Model > Evaluate
classificiation
 
- Use an expandable 
shinyAce input for the formula and
function inputs in Model > Simulate 
- Fixes for repeated simulation with grid-search
 
- Use 
test instead of validation 
radiant.model 0.9.8.0
- Option to add user defined function to simulations. This
dramatically increases the flexibility of the simulation tool
 
- Ensure variable and dataset names are valid for R (i.e., no spaces
or symbols), “fixing” the input as needed
 
- Cross validation functions for decision trees
(
cv.crtree) and neural networks(cv.nn) that
can use various performance metrics for during evaluation e.g.,
auc or profit 
- Option to add square and cube terms in Model > Linear
regression and Model > Logistic regression.
 
- Option to pass additional arguments to 
shiny::runApp
when starting radiant such as the port to use. For example,
radiant.model::radiant.model(“https://github.com/radiant-rstats/docs/raw/gh-pages/examples/demo-dvd-rnd.state.rda”,
port = 8080) 
- Avoid empty string showing up in auto-generated code for model
prediction (i.e., 
pred_data or pred_cmd) 
- Fix for VIF based on 
car for regress and
logistic 
- Load a state file on startup by providing a (relative) file path or
a url. For example,
radiant.model::radiant.model(“https://github.com/radiant-rstats/docs/raw/gh-pages/examples/demo-dvd-rnd.state.rda”)
 
- Don’t live-update the active tree input to make it easier to save
edits to a new tree without adding edits to the existing tree (Model
> Decision analysis)
 
- Fix for NA error when last line of a decision analysis input is a
node without a payoff or probability
 
- Load input (CMD + O) and Save input (CMD + S) keyboard shortcuts for
decision analysis
 
radiant.model 0.9.7.0
Major changes
- Using 
shinyFiles
to provide convenient access to data located on a server 
Minor changes
- Fix for simulations that use a data set as part of the analysis
 
- Replace non-ASCII characters in example datasets
 
- Remove 
rstudioapi as a direct import 
- Revert from 
svg to png for plots in
_Report > Rmd_ and _Report > R_.svg` scatter plots
with many point get to big for practical use on servers that have to
transfer images to a local browser 
- Removed dependency on 
methods package 
radiant.model 0.9.5.0
Major changes
- Various changes to the code to accommodate the use of
shiny::makeReactiveBinding. The advantage is that the code
generated for Report > Rmd and Report > R will
no longer have to use r_data to store and access data. This
means that code generated and used in the Radiant browser interface will
be directly usable without the browser interface as well. 
- Improved documentation and examples
 
radiant.model 0.9.2.3
Bug fixes
- Fix for https://github.com/radiant-rstats/radiant/issues/53
 
radiant.model 0.9.2.2
Major changes
- Show the interval used in prediction for Model >
Regression and Model > logistic (e.g., “prediction” or
“confidence” for linear regression)
 
- Auto complete in Model > Decision analysis now provides
hints based on the current tree input and any others defined in the app.
It also provides suggestions for the basic element of the tree (e.g.,
type: decision, type: chance,
payoff, etc.) 
- Updated user messages for Model > Decision analysis when
input has errors
 
radiant.model 0.9.2.1
Major changes
- Default interval for predictions from a linear regression is now
“confidence” rather than “prediction”
 
Estimate model button indicates when the output has
been invalidated and the model should be re-estimated 
- Combined Evaluate classification Summary and Plot into
Evaluate tab
 
- Upload and download data using the Rstudio file browser. Allows
using relative paths to files (e.g., data or images inside an Rstudio
project)
 
Minor changes
- Require 
shinyAce 0.3.0 in radiant.data and
useSoftTabs for Model > Decision Analysis 
radiant.model 0.9.1.0
Major changes
- Add Poisson as an option for Model > Simulate
 
Bug fixes
- Fix for #43 where
scatter plot was not shown for a dataset with less than 1,000 rows
 
- Fixed example for logistic regression prediction plot
 
- Fix for case weights when minimum response value is 0
 
radiant.model 0.9.0.15
Minor changes
- Allow character variables in estimation and prediction
 
- Depend on DiagrammeR 1.0.0
 
radiant.model 0.9.0.13
Major changes
- Residual diagnostic plot for Neural Network regression
 
- Improved handling of case weights for logistic regression and neural
networks
 
Minor changes
- Show number of observations used in training and validation in
Model > Evaluate classification
 
- Use Elkan’s formula to adjust probabilities when using
priors in crtree (rpart) 
- Added options to customize tree generated using 
crtree
(based on rpart) 
- Better control of tree plot size in 
plot.crtree 
- Cleanup of 
crtree code 
- Improved printing of NN weights
 
- Option to change font size in NN plots
 
- Keyboard shortcut: Press return when cursor is in textInput to store
residuals or predictions
 
Bug fixes
- Fix for tree labels when (negative) integers are used
 
radiant.model 0.9.0.8
Minor changes
- Cleanup of lists returned by 
evalbin and
confusion 
- Add intercept in coefficient tables that can be downloaded for
linear and logistic regression or using 
write.coeff 
- Convert logicals to factors in 
crtree to avoid labels
< 0.5 and >= 0.5 
- Improved labeling of decision tree splits in 
crtree.
The tooltip (aka hover-over) will contain all levels used, but the tree
label may be truncated as needed 
Bug fixes
- Fix input reset when screen size or zoom level is changed
 
radiant.model 0.9.0.4
- Renamed 
ann to nn. The ann
function is now deprecated 
radiant.model 0.9.0.3
Major changes
- Prediction confidence interval provided for logistic regression
based on blog post by [Gavin Simpson]
(https://www.fromthebottomoftheheap.net/2017/05/01/glm-prediction-intervals-i/)
 
- Argument added to 
logistic to specify if profiling or
the Wald method should be used for confidence intervals. Profiling will
be used by default for datasets with fewer than 5,000 rows 
radiant.model 0.9.0.2
Minor changes
- Left align tooltip in DiagrammeR plots (i.e., Model >Decision
Analysis and Model > Classification and regression
trees)
 
- Add information about levels in tree splits to tooltips (Model
> Classification and regression trees)
 
Bug fixes
- Fix to ensure DiagrammeR plots are shown in Rmarkdown report
generate in Report > Rmd or Report > R
 
radiant.model 0.9.0.1
Major changes
- Added option to generate normally distributed correlated data in
Model > Simulate
 
- Added option to generate normally distributed simulated data with
exact mean and standard deviation in Model > Simulate
 
- Long lines of code generated for Report > Rmd will be
wrapped to enhance readability
 
Minor changes
- Default names when saving Decision Analysis input and output are now
based on tree name
 
- Allow browser zoom for tree plots in Model > Decision Analysis
and Model > Classification and Regression Trees
 
- Enhanced keyboard shortcuts for estimation and reporting
 
- Applied 
styler to code 
Bug fixes
- Grid search specs ignored when Model > Simulate >
Repeat is set to 
Simulate 
- The number of repetitions in Model > Simulate was NA when grid
search was used
 
- Fix for large weights that may cause an integer overflow
 
- Minor fix for coefficient plot in 
plot.logistic 
- Fixed state setting for decision analysis sensitivity input
 
- Fixed for special characters (e.g., curly quote) in input for Model
> Decision Analysis
 
- Check that costs are not assigned to terminal nodes in Decision
Analysis Trees. Specifying a cost is only useful if it applies to
multiple nodes in a branch. If the cost only applies to a terminal node
adjust the payoff instead
 
- Ensure : are followed by a space in the YAML input to Model >
Decision Analysis
 
radiant.model 0.8.7.4
Minor change
- Upgraded dplyr dependency to 0.7.1
 
- Upgraded tidyr dependency to 0.7
 
Bug fix
- Fix in 
crs when a tibble is passed 
radiant.model 0.8.3.0
Major change
- Added option to use robust standard errors in Linear
regression and Logistic regression. The 
HC1
covariance matrix is used to produce results consistent with Stata 
Minor changes
- Moved coefficient formatting from summary.regress and
summary.logistic to make result$coeff more easily accessible
 
- Added F-score to Model > Evaluate classification >
Confusion
 
Bug fixes
- Fixed RSME typo
 
- Don’t calculate VIFs when stepwise regression selects only one
explanatory variable
 
radiant.model 0.8.0.0
Major changes
- Added Model > Naive Bayes based on e1071
 
- Added Model > Classification and regression trees based on
rpart
 
- Added Model > Collaborative Filtering and example dataset
(data/cf.rda)
 
- Various enhancements to evaluate (binary) classification models
 
- Added Garson plot and moved all plots to the ANN > Plot tab
 
Minor changes
- Improved plot sizing for Model > Decision Analysis
 
- Show progress indicators if variable acquisition takes some
time
 
- Expanded coefficient csv file for linear and logistic
regression
 
- Show dataset name in output if dataframe passed directly to analysis
function
 
- As an alternative to using the Estimate button to run a model you
can now also use CTRL-enter (CMD-enter on mac)
 
- Use ALT-enter as a keyboard short-cut to generate code and sent to
Report > Rmd or Report > R
 
- Improved documentation on how to customize plots in Report >
Rmd or Report > R
 
Bug fixes
- Multiple tooltips in sequence in Decision Analysis
 
- Decision Analysis plot size in PDF was too small
 
- Replace histogram by distribution in regression plots
 
- Fix bug in regex for overlapping labels in variables section of
Model > Decision Analysis
 
- Fixes for model with only an intercept (e.g., after stepwise
regression)
 
- Update Predict settings when dataset is changed
 
- Fix for predict when using center or standardize with a command to
generate the predictions
 
- Show full confusion matrix even if some elements are missing
 
- Fix for warnings when creating profit and gains charts
 
- Product dropdown for Model > Collaborative filtering did not list
all variables
 
Deprecated
- Use of *_each is deprecated